{
 "cells": [
  {
   "cell_type": "code",
   "execution_count": 1,
   "id": "ab961d49",
   "metadata": {},
   "outputs": [],
   "source": [
    "from tensorflow import keras\n",
    "import matplotlib.pyplot as plt\n",
    "%matplotlib inline\n",
    "import numpy as np\n",
    "import pandas as pd\n",
    "import glob\n",
    "import tensorflow as tf"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 2,
   "id": "e1ffe51e",
   "metadata": {},
   "outputs": [
    {
     "name": "stdout",
     "output_type": "stream",
     "text": [
      "num of train img:  45424\n",
      "num of label img:  45424\n"
     ]
    }
   ],
   "source": [
    "image = glob.glob(\"D:/lumor_segementation/kits19-master/processed_image/*/*.png\")\n",
    "label = glob.glob(\"D:/lumor_segementation/kits19-master/processed_segmen/*/*.png\")\n",
    "print(\"num of train img: \", len(image))\n",
    "print(\"num of label img: \", len(label))"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 3,
   "id": "0f6e9fc0",
   "metadata": {},
   "outputs": [
    {
     "data": {
      "text/plain": [
       "['D:/lumor_segementation/kits19-master/processed_image\\\\case_00209\\\\image00097.png',\n",
       " 'D:/lumor_segementation/kits19-master/processed_image\\\\case_00209\\\\image00098.png',\n",
       " 'D:/lumor_segementation/kits19-master/processed_image\\\\case_00209\\\\image00099.png',\n",
       " 'D:/lumor_segementation/kits19-master/processed_image\\\\case_00209\\\\image00100.png',\n",
       " 'D:/lumor_segementation/kits19-master/processed_image\\\\case_00209\\\\image00101.png']"
      ]
     },
     "execution_count": 3,
     "metadata": {},
     "output_type": "execute_result"
    }
   ],
   "source": [
    "image[-5:]"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 4,
   "id": "f7c18839",
   "metadata": {},
   "outputs": [
    {
     "data": {
      "text/plain": [
       "['D:/lumor_segementation/kits19-master/processed_segmen\\\\case_00209\\\\segmentation00097.png',\n",
       " 'D:/lumor_segementation/kits19-master/processed_segmen\\\\case_00209\\\\segmentation00098.png',\n",
       " 'D:/lumor_segementation/kits19-master/processed_segmen\\\\case_00209\\\\segmentation00099.png',\n",
       " 'D:/lumor_segementation/kits19-master/processed_segmen\\\\case_00209\\\\segmentation00100.png',\n",
       " 'D:/lumor_segementation/kits19-master/processed_segmen\\\\case_00209\\\\segmentation00101.png']"
      ]
     },
     "execution_count": 4,
     "metadata": {},
     "output_type": "execute_result"
    }
   ],
   "source": [
    "label[-5:]"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 5,
   "id": "8713854e",
   "metadata": {},
   "outputs": [],
   "source": [
    "#对图像和标签做乱序处理（打乱）\n",
    "#但注意要用同一个index对其做乱序，确保乱序后图像与标签仍一一对应\n",
    "index = np.random.permutation(len(image))\n",
    "image = np.array(image)[index]\n",
    "label = np.array(label)[index]"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 6,
   "id": "cae84b2a",
   "metadata": {},
   "outputs": [
    {
     "data": {
      "text/plain": [
       "<TensorSliceDataset element_spec=(TensorSpec(shape=(), dtype=tf.string, name=None), TensorSpec(shape=(), dtype=tf.string, name=None))>"
      ]
     },
     "execution_count": 6,
     "metadata": {},
     "output_type": "execute_result"
    }
   ],
   "source": [
    "all_ds = tf.data.Dataset.from_tensor_slices((image,label))\n",
    "all_ds"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 7,
   "id": "898144f8",
   "metadata": {},
   "outputs": [],
   "source": [
    "def read_png(path):\n",
    "    img = tf.io.read_file(path)\n",
    "    img = tf.image.decode_png(img, channels = 3)\n",
    "    img = tf.image.resize(img,(256,256))\n",
    "    return img\n",
    "\n",
    "def read_png_label(path):\n",
    "    img = tf.io.read_file(path)\n",
    "    img = tf.image.decode_png(img, channels = 1)\n",
    "    img = tf.image.resize(img,(256,256))\n",
    "    return img\n",
    "\n",
    "#对图像和标签做标准化\n",
    "def normalize(img,mask):\n",
    "    img = tf.cast(img, tf.float32)\n",
    "    #归一化到(0,1)之间\n",
    "    img = img / 127.5 - 1\n",
    "    #标注就是简单的分类，int32足够\n",
    "    mask = tf.cast(mask, tf.int8)\n",
    "    return img, mask"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 28,
   "id": "f120e23e",
   "metadata": {},
   "outputs": [
    {
     "name": "stdout",
     "output_type": "stream",
     "text": [
      "img shape:  (256, 256, 3)\n",
      "label shape:  (256, 256, 1)\n"
     ]
    }
   ],
   "source": [
    "#测试\n",
    "ex_img = read_png(image[100])\n",
    "ex_label = read_png_label(label[100])\n",
    "print(\"img shape: \", ex_img.shape)\n",
    "print(\"label shape: \", ex_label.shape)"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 29,
   "id": "6d8f079d",
   "metadata": {},
   "outputs": [],
   "source": [
    "ex_img, ex_label = normalize(ex_img,ex_label)"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 30,
   "id": "6323a415",
   "metadata": {},
   "outputs": [
    {
     "name": "stderr",
     "output_type": "stream",
     "text": [
      "Clipping input data to the valid range for imshow with RGB data ([0..1] for floats or [0..255] for integers).\n"
     ]
    },
    {
     "data": {
      "text/plain": [
       "<matplotlib.image.AxesImage at 0x1fd920fe5f8>"
      ]
     },
     "execution_count": 30,
     "metadata": {},
     "output_type": "execute_result"
    },
    {
     "data": {
      "image/png": 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\n",
      "text/plain": [
       "<Figure size 640x480 with 2 Axes>"
      ]
     },
     "metadata": {},
     "output_type": "display_data"
    }
   ],
   "source": [
    "#用plt一行两图的格式显示图像和其对应标注\n",
    "plt.subplot(1,2,1)\n",
    "plt.imshow(ex_img)\n",
    "plt.subplot(1,2,2)\n",
    "plt.imshow(ex_label)"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 31,
   "id": "04db7859",
   "metadata": {},
   "outputs": [],
   "source": [
    "background = 0\n",
    "kidney = 0\n",
    "lumor = 0\n",
    "for i in range(256):\n",
    "    for j in range(256):\n",
    "        if ex_label[i][j] == 1:\n",
    "            kidney = kidney + 1\n",
    "        elif (ex_label[i][j] == 2):\n",
    "            lumor = lumor + 1\n",
    "        else:\n",
    "            background = background + 1"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 35,
   "id": "d38ed937",
   "metadata": {},
   "outputs": [
    {
     "name": "stdout",
     "output_type": "stream",
     "text": [
      "background:  63028\n",
      "kidney:  2129\n",
      "lumor:  379\n"
     ]
    }
   ],
   "source": [
    "print(\"background: \",background)\n",
    "print(\"kidney: \",kidney)\n",
    "print(\"lumor: \",lumor)\n",
    "if(background + kidney + lumor) != 256 * 256:\n",
    "    print(\"error\")"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 36,
   "id": "a4f31578",
   "metadata": {},
   "outputs": [],
   "source": [
    "#批处理训练图+标注的函数\n",
    "def load_image(img_path,mask_path):\n",
    "    img = read_png(img_path)\n",
    "    mask = read_png_label(mask_path)\n",
    "    \n",
    "    #共同左右翻转\n",
    "    #这也是图像增强的方法之一\n",
    "    #这里确保要翻转都翻转就行了\n",
    "    #if tf.random.uniform(())>0.5:\n",
    "        #img = tf.image.flip_left_right(img)\n",
    "        #mask = tf.image.flip_left_right(mask)\n",
    "    \n",
    "    #标准化\n",
    "    img,mask=normalize(img,mask)\n",
    "    \n",
    "    return img,mask"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 37,
   "id": "d313eec6",
   "metadata": {},
   "outputs": [],
   "source": [
    "all_ds = all_ds.map(load_image)"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 38,
   "id": "c31b5387",
   "metadata": {},
   "outputs": [
    {
     "data": {
      "text/plain": [
       "<MapDataset element_spec=(TensorSpec(shape=(256, 256, 3), dtype=tf.float32, name=None), TensorSpec(shape=(256, 256, 1), dtype=tf.int8, name=None))>"
      ]
     },
     "execution_count": 38,
     "metadata": {},
     "output_type": "execute_result"
    }
   ],
   "source": [
    "all_ds"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 39,
   "id": "70edc3ec",
   "metadata": {},
   "outputs": [
    {
     "name": "stdout",
     "output_type": "stream",
     "text": [
      "train count:  36340\n",
      "test count:  9084\n"
     ]
    }
   ],
   "source": [
    "test_count = int(len(image)*0.2)\n",
    "train_count = len(image) - test_count\n",
    "print(\"train count: \", train_count)\n",
    "print(\"test count: \", test_count)"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 40,
   "id": "e7aecc96",
   "metadata": {},
   "outputs": [],
   "source": [
    "#定义一些训练的参数\n",
    "BATCH_SIZE = 8    \n",
    "BUFFER_SIZE = 200\n",
    "step_per_epoch = train_count // BATCH_SIZE       #训练步长\n",
    "val_step = test_count // BATCH_SIZE              #测试步长"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 41,
   "id": "627e4615",
   "metadata": {},
   "outputs": [],
   "source": [
    "train_ds = all_ds.skip(test_count)\n",
    "test_ds = all_ds.take(test_count)"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 42,
   "id": "56cd41ce",
   "metadata": {},
   "outputs": [],
   "source": [
    "#对训练集 shuffle + batch\n",
    "#对测试机 batch\n",
    "train_ds = train_ds.shuffle(BUFFER_SIZE).batch(BATCH_SIZE)\n",
    "test_ds = test_ds.batch(BATCH_SIZE)"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 43,
   "id": "2afe305a",
   "metadata": {},
   "outputs": [
    {
     "data": {
      "text/plain": [
       "<BatchDataset element_spec=(TensorSpec(shape=(None, 256, 256, 3), dtype=tf.float32, name=None), TensorSpec(shape=(None, 256, 256, 1), dtype=tf.int8, name=None))>"
      ]
     },
     "execution_count": 43,
     "metadata": {},
     "output_type": "execute_result"
    }
   ],
   "source": [
    "train_ds"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 44,
   "id": "51c7e0a9",
   "metadata": {},
   "outputs": [],
   "source": [
    "#构建U-NET模型"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 45,
   "id": "938a1ea1",
   "metadata": {},
   "outputs": [],
   "source": [
    "#封装下采样\n",
    "class DownSample(tf.keras.layers.Layer):\n",
    "    def __init__(self, units):\n",
    "        super(DownSample, self).__init__()\n",
    "        self.conv1 = tf.keras.layers.Conv2D(units,kernel_size=3,\n",
    "                                           padding='same')\n",
    "        self.conv2 = tf.keras.layers.Conv2D(units,kernel_size=3,\n",
    "                                           padding='same')\n",
    "        self.pool = tf.keras.layers.MaxPooling2D()\n",
    "        \n",
    "    def call(self, x, Is_Pool=True):\n",
    "        if(Is_Pool):\n",
    "            x = self.pool(x)   #下采样\n",
    "        x = self.conv1(x)\n",
    "        x = tf.nn.relu(x)  #采样后需要激活\n",
    "        x = self.conv2(x)\n",
    "        x = tf.nn.relu(x)\n",
    "        return x"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 46,
   "id": "2075901c",
   "metadata": {},
   "outputs": [],
   "source": [
    "#封装上采样\n",
    "class UpSample(tf.keras.layers.Layer):\n",
    "    def __init__(self, units):\n",
    "        super(UpSample, self).__init__()\n",
    "        self.conv1 = tf.keras.layers.Conv2D(units,kernel_size=3,\n",
    "                                           padding='same')\n",
    "        self.conv2 = tf.keras.layers.Conv2D(units,kernel_size=3,\n",
    "                                           padding='same')\n",
    "        self.deconv = tf.keras.layers.Conv2DTranspose(units//2,kernel_size=2,\n",
    "                                                     strides=2,padding='same')\n",
    "        #反卷积上采样时单元数减半(units//2),图像大小加倍(strides=2)\n",
    "        \n",
    "    def call(self, x):\n",
    "        x = self.conv1(x)\n",
    "        x = tf.nn.relu(x)  #采样后需要激活\n",
    "        x = self.conv2(x)\n",
    "        x = tf.nn.relu(x)\n",
    "        x = self.deconv(x)\n",
    "        x = tf.nn.relu(x)\n",
    "        return x"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 47,
   "id": "407b9c34",
   "metadata": {},
   "outputs": [],
   "source": [
    "class Unet_model(tf.keras.Model):\n",
    "    def __init__(self):\n",
    "        super(Unet_model, self).__init__()\n",
    "        self.down1 = DownSample(64)\n",
    "        self.down2 = DownSample(128)\n",
    "        self.down3 = DownSample(256)\n",
    "        self.down4 = DownSample(512)\n",
    "        self.down5 = DownSample(1024)\n",
    "        \n",
    "        self.middle_up = tf.keras.layers.Conv2DTranspose(512,kernel_size=2,\n",
    "                                                 strides=2,padding='same')\n",
    "        \n",
    "        self.up1 = UpSample(512)\n",
    "        self.up2 = UpSample(256)\n",
    "        self.up3 = UpSample(128)\n",
    "        \n",
    "        self.conv_last = DownSample(64)  #Is_pool=False\n",
    "        \n",
    "        self.last = tf.keras.layers.Conv2D(3,\n",
    "                                          kernel_size=1,\n",
    "                                          padding='same')\n",
    "        #语义分割本质上是分类问题，分3类则最终输出3个通道\n",
    "        \n",
    "    #前向传播\n",
    "    def call(self,x):\n",
    "        x1 = self.down1(x,Is_Pool=False)   #初始第一个是没有下采样的\n",
    "        x2 = self.down2(x1)                #这里调用的是其call方法\n",
    "        x3 = self.down3(x2)\n",
    "        x4 = self.down4(x3)\n",
    "        x5 = self.down5(x4)\n",
    "        \n",
    "        x5 = self.middle_up(x5)\n",
    "        \n",
    "        x5 = tf.concat([x4,x5],axis=-1)   #在通道维度上合并，同尺寸，512+512得到共1024通道\n",
    "        x5 = self.up1(x5)\n",
    "        \n",
    "        x5 = tf.concat([x3,x5],axis=-1)  \n",
    "        x5 = self.up2(x5)\n",
    "        \n",
    "        x5 = tf.concat([x2,x5],axis=-1)  \n",
    "        x5 = self.up3(x5)\n",
    "        \n",
    "        x5 = tf.concat([x1,x5],axis=-1)\n",
    "        x5 = self.conv_last(x5,Is_Pool=False)  #最后不下采样\n",
    "        \n",
    "        x5 = self.last(x5)\n",
    "        \n",
    "        return x5"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 48,
   "id": "2a735993",
   "metadata": {},
   "outputs": [],
   "source": [
    "model = Unet_model()  #实例化定义好的U-NET模型"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 49,
   "id": "c1cdfe8d",
   "metadata": {},
   "outputs": [],
   "source": [
    "#每50个batch 约 18s\n",
    "#每个train_epoch 大约 18s x (4500 / 50) = 18s x 90 = 18min x 1.5 = 27min "
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 50,
   "id": "9309bb30",
   "metadata": {},
   "outputs": [
    {
     "name": "stdout",
     "output_type": "stream",
     "text": [
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      "the epoch 1  result: \n",
      "train --> Loss: 0.02, Accuracy: 99.52, IOU: 0.58\n",
      "test  --> Loss: 0.01, Accuracy: 99.80, IOU: 0.79\n"
     ]
    }
   ],
   "source": [
    "#自定义训练\n",
    "#实例化优化器opt\n",
    "opt = tf.keras.optimizers.Adam(0.0001)\n",
    "#实例化损失函数（评估）\n",
    "loss_fn = tf.keras.losses.SparseCategoricalCrossentropy(from_logits=True)\n",
    "\n",
    "class MeanIOU(tf.keras.metrics.MeanIoU):   #父类的方法需要y_true 和 y_pred有相同形状\n",
    "    def __call__(self, y_true, y_pred, sample_weight=None):    #调用时默认会寻找call方法\n",
    "        #y_pred原本是长度为3张量\n",
    "        y_pred = tf.argmax(y_pred,axis=-1)\n",
    "        return super().__call__(y_true, y_pred,sample_weight=sample_weight)\n",
    "    \n",
    "train_loss = tf.keras.metrics.Mean(name='train_loss')\n",
    "train_acc = tf.keras.metrics.SparseCategoricalAccuracy(name='train_acc')\n",
    "train_iou = MeanIOU(3, name='train_iou')\n",
    "\n",
    "test_loss = tf.keras.metrics.Mean(name='test_loss')\n",
    "test_acc = tf.keras.metrics.SparseCategoricalAccuracy(name='test_acc')\n",
    "test_iou = MeanIOU(3, name='test_iou')\n",
    "\n",
    "def train_step(images, labels):\n",
    "    with tf.GradientTape() as tape:\n",
    "        #调用模型得到预测结果\n",
    "        predictions = model(images)   \n",
    "        #对比预测结果与标注得到损失\n",
    "        loss = loss_fn(labels,predictions) \n",
    "    #用经典反向传播得到梯度\n",
    "    gradients = tape.gradient(loss, model.trainable_variables)  \n",
    "    #应用梯度对参数做优化\n",
    "    opt.apply_gradients(zip(gradients, model.trainable_variables))\n",
    "    \n",
    "    #得到我们能看懂的损失值\n",
    "    train_loss(loss)\n",
    "    #得到我们能看懂的准确率\n",
    "    train_acc(labels,predictions)\n",
    "    #IOU值\n",
    "    train_iou(labels,predictions)\n",
    "    \n",
    "def test_step(images, labels):\n",
    "    predictions = model(images)\n",
    "    loss = loss_fn(labels,predictions)\n",
    "    \n",
    "    test_loss(loss)\n",
    "    test_acc(labels,predictions)\n",
    "    #IOU值\n",
    "    test_iou(labels,predictions)\n",
    "\n",
    "EPOCHS = 1\n",
    "    \n",
    "for epoch in range(EPOCHS):\n",
    "    train_index = 1\n",
    "    test_index = 1\n",
    "    #在下一个epoch开始时，重置评估指标\n",
    "    train_loss.reset_states()\n",
    "    train_acc.reset_states()\n",
    "    train_iou.reset_states()\n",
    "    test_loss.reset_states()\n",
    "    test_acc.reset_states()\n",
    "    test_iou.reset_states()\n",
    "    \n",
    "    print(\"training \", epoch+1, \" epoch: waiting......\")\n",
    "    for images,labels in train_ds:\n",
    "        if(train_index % 50 == 0):\n",
    "            print(\"batch \", train_index, \"/\", step_per_epoch)\n",
    "        train_index = train_index + 1\n",
    "        train_step(images,labels)\n",
    "        \n",
    "    print(\"testing......\")\n",
    "    for images,labels in test_ds:\n",
    "        if(test_index % 50 == 0):\n",
    "            print(\"batch \", test_index, \"/\", val_step)\n",
    "        test_index = test_index + 1\n",
    "        test_step(images,labels)\n",
    "    \n",
    "    print(\"the epoch\", epoch+1, \" result: \")\n",
    "    template1 = \"train --> Loss: {:.2f}, Accuracy: {:.2f}, IOU: {:.2f}\"\n",
    "    print(template1.format(train_loss.result(), train_acc.result()*100, train_iou.result()))\n",
    "    template2 = \"test  --> Loss: {:.2f}, Accuracy: {:.2f}, IOU: {:.2f}\"\n",
    "    print(template2.format(test_loss.result(), test_acc.result()*100, test_iou.result()))"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 51,
   "id": "f36b085d",
   "metadata": {},
   "outputs": [
    {
     "name": "stdout",
     "output_type": "stream",
     "text": [
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      "the epoch 2  result: \n",
      "train --> Loss: 0.00, Accuracy: 99.85, IOU: 0.83\n",
      "test  --> Loss: 0.00, Accuracy: 99.89, IOU: 0.88\n",
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      "train --> Loss: 0.00, Accuracy: 99.93, IOU: 0.92\n",
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      "train --> Loss: 0.00, Accuracy: 99.94, IOU: 0.94\n",
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      "the epoch 13  result: \n",
      "train --> Loss: 0.00, Accuracy: 99.96, IOU: 0.96\n",
      "test  --> Loss: 0.00, Accuracy: 99.95, IOU: 0.95\n",
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      "the epoch 14  result: \n",
      "train --> Loss: 0.00, Accuracy: 99.96, IOU: 0.96\n",
      "test  --> Loss: 0.00, Accuracy: 99.95, IOU: 0.95\n",
      "training  15  epoch: waiting......\n",
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      "the epoch 15  result: \n",
      "train --> Loss: 0.00, Accuracy: 99.96, IOU: 0.96\n",
      "test  --> Loss: 0.00, Accuracy: 99.95, IOU: 0.95\n"
     ]
    }
   ],
   "source": [
    "EPOCHS = 15\n",
    "epoch = 1\n",
    "    \n",
    "while epoch < EPOCHS:\n",
    "    train_index = 1\n",
    "    test_index = 1\n",
    "    #在下一个epoch开始时，重置评估指标\n",
    "    train_loss.reset_states()\n",
    "    train_acc.reset_states()\n",
    "    train_iou.reset_states()\n",
    "    test_loss.reset_states()\n",
    "    test_acc.reset_states()\n",
    "    test_iou.reset_states()\n",
    "    \n",
    "    print(\"training \", epoch+1, \" epoch: waiting......\")\n",
    "    for images,labels in train_ds:\n",
    "        if(train_index % 50 == 0):\n",
    "            print(\"batch \", train_index, \"/\", step_per_epoch)\n",
    "        train_index = train_index + 1\n",
    "        train_step(images,labels)\n",
    "        \n",
    "    print(\"testing......\")\n",
    "    for images,labels in test_ds:\n",
    "        if(test_index % 50 == 0):\n",
    "            print(\"batch \", test_index, \"/\", val_step)\n",
    "        test_index = test_index + 1\n",
    "        test_step(images,labels)\n",
    "    \n",
    "    print(\"the epoch\", epoch+1, \" result: \")\n",
    "    template1 = \"train --> Loss: {:.2f}, Accuracy: {:.2f}, IOU: {:.2f}\"\n",
    "    print(template1.format(train_loss.result(), train_acc.result()*100, train_iou.result()))\n",
    "    template2 = \"test  --> Loss: {:.2f}, Accuracy: {:.2f}, IOU: {:.2f}\"\n",
    "    print(template2.format(test_loss.result(), test_acc.result()*100, test_iou.result()))\n",
    "    \n",
    "    epoch = epoch + 1"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 53,
   "id": "fb9c569a",
   "metadata": {},
   "outputs": [],
   "source": [
    "model.save_weights(\"D:/lumor_segementation/kits19-master/model/U-Net_for_15_epoches.h5\")"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 54,
   "id": "6db8f1a5",
   "metadata": {},
   "outputs": [
    {
     "name": "stdout",
     "output_type": "stream",
     "text": [
      "1/1 [==============================] - 4s 4s/step\n"
     ]
    },
    {
     "data": {
      "image/png": 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\n",
      "text/plain": [
       "<Figure size 1000x1000 with 15 Axes>"
      ]
     },
     "metadata": {},
     "output_type": "display_data"
    }
   ],
   "source": [
    "#从loss和acc来看，训练3个epoch后性能已经非常优秀，现在我们可视化查看一下效果\n",
    "for image, mask in test_ds.take(1):\n",
    "    pred_mask = model.predict(image)\n",
    "    pred_mask = tf.argmax(pred_mask, axis=-1)\n",
    "    pred_mask = pred_mask[...,tf.newaxis]\n",
    "    \n",
    "    plt.figure(figsize=(10,10))\n",
    "    for i in range(5):\n",
    "        plt.subplot(5,3,i*3+1)\n",
    "        plt.imshow(tf.keras.preprocessing.image.array_to_img(image[i]))\n",
    "        plt.subplot(5,3,i*3+2)\n",
    "        plt.imshow(tf.keras.preprocessing.image.array_to_img(mask[i]))\n",
    "        plt.subplot(5,3,i*3+3)\n",
    "        plt.imshow(tf.keras.preprocessing.image.array_to_img(pred_mask[i]))"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 31,
   "id": "144b749d",
   "metadata": {},
   "outputs": [
    {
     "name": "stdout",
     "output_type": "stream",
     "text": [
      "Test IOU: {:.3f} tf.Tensor(0.8916585, shape=(), dtype=float32)\n"
     ]
    }
   ],
   "source": [
    "#可以看到预测效果还是不错的\n",
    "#下面我们用IOU指标评估一下结果\n",
    "class MeanIOU(tf.keras.metrics.MeanIoU):   #父类的方法需要y_true 和 y_pred有相同形状\n",
    "    def __call__(self, y_true, y_pred, sample_weight=None):    #调用时默认会寻找call方法\n",
    "        #y_pred原本是长度为3张量\n",
    "        y_pred = tf.argmax(y_pred,axis=-1)\n",
    "        return super().__call__(y_true, y_pred,sample_weight=sample_weight)\n",
    "    \n",
    "test_iou = MeanIOU(3, name='test_iou')\n",
    "    \n",
    "def test_step(images, labels):\n",
    "    predictions = model(images)\n",
    "    test_iou(labels,predictions)\n",
    "    \n",
    "test_iou.reset_states()\n",
    "for images,labels in test_ds:\n",
    "    test_step(images,labels)\n",
    "    \n",
    "print(\"Test IOU: {:.3f}\",test_iou.result())"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 32,
   "id": "ebe5a5c5",
   "metadata": {},
   "outputs": [
    {
     "name": "stdout",
     "output_type": "stream",
     "text": [
      "Test IOU: 0.892\n"
     ]
    }
   ],
   "source": [
    "print(\"Test IOU: {:.3f}\".format(test_iou.result()))"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 49,
   "id": "c2b95b76",
   "metadata": {},
   "outputs": [
    {
     "name": "stdout",
     "output_type": "stream",
     "text": [
      "num of final_test:  4050\n"
     ]
    }
   ],
   "source": [
    "#下面我们在官方没给标签的部分做测试\n",
    "final_test = glob.glob(\"D:/lumor_segementation/kits19-master/final_test/*/*.png\")\n",
    "print(\"num of final_test: \", len(final_test))"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 50,
   "id": "7b0b1dc2",
   "metadata": {},
   "outputs": [],
   "source": [
    "def load_test(img_path):\n",
    "    img = read_png(img_path)\n",
    "    \n",
    "    img = tf.cast(img, tf.float32)\n",
    "    #归一化到(0,1)之间\n",
    "    img = img / 127.5 - 1\n",
    "    \n",
    "    return img"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 65,
   "id": "754fb0e6",
   "metadata": {},
   "outputs": [
    {
     "name": "stdout",
     "output_type": "stream",
     "text": [
      "1/1 [==============================] - 0s 14ms/step\n"
     ]
    },
    {
     "name": "stderr",
     "output_type": "stream",
     "text": [
      "Clipping input data to the valid range for imshow with RGB data ([0..1] for floats or [0..255] for integers).\n"
     ]
    },
    {
     "name": "stdout",
     "output_type": "stream",
     "text": [
      "1/1 [==============================] - 0s 17ms/step\n"
     ]
    },
    {
     "name": "stderr",
     "output_type": "stream",
     "text": [
      "Clipping input data to the valid range for imshow with RGB data ([0..1] for floats or [0..255] for integers).\n"
     ]
    },
    {
     "name": "stdout",
     "output_type": "stream",
     "text": [
      "1/1 [==============================] - 0s 19ms/step\n"
     ]
    },
    {
     "name": "stderr",
     "output_type": "stream",
     "text": [
      "Clipping input data to the valid range for imshow with RGB data ([0..1] for floats or [0..255] for integers).\n"
     ]
    },
    {
     "name": "stdout",
     "output_type": "stream",
     "text": [
      "1/1 [==============================] - 0s 16ms/step\n"
     ]
    },
    {
     "name": "stderr",
     "output_type": "stream",
     "text": [
      "Clipping input data to the valid range for imshow with RGB data ([0..1] for floats or [0..255] for integers).\n"
     ]
    },
    {
     "name": "stdout",
     "output_type": "stream",
     "text": [
      "1/1 [==============================] - 0s 14ms/step\n"
     ]
    },
    {
     "name": "stderr",
     "output_type": "stream",
     "text": [
      "Clipping input data to the valid range for imshow with RGB data ([0..1] for floats or [0..255] for integers).\n"
     ]
    },
    {
     "name": "stdout",
     "output_type": "stream",
     "text": [
      "1/1 [==============================] - 0s 16ms/step\n"
     ]
    },
    {
     "name": "stderr",
     "output_type": "stream",
     "text": [
      "Clipping input data to the valid range for imshow with RGB data ([0..1] for floats or [0..255] for integers).\n"
     ]
    },
    {
     "name": "stdout",
     "output_type": "stream",
     "text": [
      "1/1 [==============================] - 0s 14ms/step\n"
     ]
    },
    {
     "name": "stderr",
     "output_type": "stream",
     "text": [
      "Clipping input data to the valid range for imshow with RGB data ([0..1] for floats or [0..255] for integers).\n"
     ]
    },
    {
     "name": "stdout",
     "output_type": "stream",
     "text": [
      "1/1 [==============================] - 0s 17ms/step\n"
     ]
    },
    {
     "name": "stderr",
     "output_type": "stream",
     "text": [
      "Clipping input data to the valid range for imshow with RGB data ([0..1] for floats or [0..255] for integers).\n"
     ]
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GjfzgBz9gfHycWCwGwJtvvkl9fT19fX3zvoff78fv91+2PxqN1qzY0ooVK/B4PtESYxERERER+ZRRZpqrWrlpUUF2x44dvPbaa7zxxhtEIhF3fnY0GiUYDDIwMMBrr73GI488QnNzM0eOHOHpp5/mwQcf5K677gJg8+bN9PX18cUvfpFEIsHExASVSoW/+Zu/mfeDFxERERERWS5uZGZ64okn+PznP89PfvITxsfH6ejo4IMPPuDee++t5SMuCYtqv2MYxrz7X331Vb72ta8xNDTE448/ztGjR8lkMnR3d/OVr3yF559/fs63AD/60Y/4u7/7O7xeL+FwmO7uboaGhujv73e/cbiS2VLStWh/U8tri4iIiIjI0najMtO5c+fYunUrhw8fpq6ujr/+67/GNE1+9atfXVNuqnVuqfb1Fz21+Eq6u7s5ePDgVd/nn//5n/nWt77Fj370I+BiNa/u7m5+8pOf8J3vfOeq5/v9fl544YWajODW8toiIiIiIrK03ajM1NPTg8/nY8eOHXNy0/79+68pN9U6t1T7+osakb0RisUioVCIX/7yl2zdutXd/+STTzIzM8Mbb7xx2TkfLyXtOA5TU1M0Nzcv+I1HNVUqFVKpFJ2dnVonKyIiIiIiN9xic9NSy0xQ3dx03e13rtfExATlcnnevkgnT56c95xP0n6nmoaGhq5agUxERERERGSxFpublmpmgurkppseZK/Hx0tJJxIJVq5cWcM7uigSidT6FkRERERERBbMTH/FI3ixanJPNiXe4bdVyU03Pci2tLRgmqbbB2nW2NjYgj2RFiolXWu1GqIXEREREZFPt8XmpoUykxcLr1GbIMu/L2KtRm666Qs8fT4f99xzDwcOHHD3OY7DgQMH2Lhx482+HRERERERkSVHuenKalKpaNeuXbzyyiv80z/9EydOnOBv//ZvyWQyfP3rX7+m83/84x8v6noejwe/3084HCYUChGNRmlvb6e1tRXLsjBNE9M0MQxjUd8WPPXUU3O2BwcH2bJlC6FQiFgsxjPPPINt24u6VxEREREREfhkuWmxmamaqpGbarJG9rHHHiMej/Pd736X0dFR1q9fz+9+97vLFjLP5/XXX+e555676nEej4dIJILP5yMcDuPz+bAsC8dxME2T1atXUygUOHPmDI7jUKlUKJVK2LZNJpMhlUrhOM4Vr/Hiiy+6v5fLZbZs2UJ7ezvvvvsuIyMjbNu2Dcuy2LNnz9U/FBERERERkUtcb2661sx0s1QjN9309juf1H333cfdd9/NK6+8suAxoVCI+vp62tvbSafTDA8PUygUaGhocEdlvV4vPp+PVCrFxMQE+Xwen89HLBbD5/MxOTlJsVgklUpRKpXmvc6lzX3379/Po48+yvDwsPsfa+/evezevZt4PI7P57vxH4aIiIiIiMjHXJqZNvHlmq2RtSsl3uKNquSmZdUEtVgs8v7777Np06Z5XzcMg4aGBjo7O4nFYliWRSgUIp/Ps2rVKm677Ta8Xi+2bTMzM8P58+dJpVJEo1EKhQLpdJpUKkVLSwutra20tLTQ09OzYKGpbDbr/n7o0CHWrVs359uRhx9+mGQyybFjx27o5yAiIiIiIjKfq2WmWqhGbloW7XdmzfZSisVil71mGAZdXV0Eg0EMw8Dr9ZLJZIjH41QqFS5cuOBOI56PaZrU1dXR0tJCOBymXC4zOjqKz+fj9ttv58SJE5eNzG7fvp3/+T//JwCjo6Pz9niafU1ERERERKTarpSZaqUauWlZjcheSX19PaFQCJ/PR7lc5uTJk5w4ccINsvl8/oprXuvr69mwYQN1dXXuVOSWlhYA8vk8DQ0Nl52zb98+BgYGqvVIIiIiIiIiy141ctOyCrKzvZTGx8fn7J9d2zoxMcG5c+cYGBggm81yrct/fT4fmzdvxrZtpqam8Hq95HI5yuUy9fX1pNNpGhsb561ofOrUKQDa29vn7fE0+5qIiIiIiEi1LZSZau1G56ZlFWRneykdPHhwzv7Gxkby+TyTk5OkUqlrDrCzvF4v8Xiczs5OotEoExMTTExMkEgkiMVixGIxPB6Pu0D5Uh0dHQBs3LiRDz/8cM5/mDfffJP6+nr6+vqu42lFREREREQWZ6HMVGs3OjctqyALF3sp/fSnP3W3/X4/ra2tVCoVLGvx1bgikQh1dXUcPnyY06dPUy6XKRaLFItFpqenOXXqFPX19aRSKZqbm+ece//993PXXXcBsHnzZvr6+njiiSf44IMP+P3vf8/zzz/Pjh07FiwWJSIiIiIicqN9PDPVWjVy07ILso899hjf//733e36+nps26apqem6guxdd92Fz+cjmUzy0Ucfkc/nKZVKeL1ePB4PmUwG27axLAvLsjBN0z339ddfd383TZN9+/ZhmiYbN27k8ccfZ9u2bXN6JomIiIiIiFTbxzNTrVUjNy27PrIAyWSSaDSKaZp0d3eTz+fp6urio48+IpFIXPP7hMNhNm/ezB/+8AfGx8fp7Oyko6OD8+fPUy6X8Xg89PT0EAgEmJmZoVgsMjAwgG3bwNw+siIiIiIiIkvFbGZaan1kb5Rl1X7n44LBIMFgkDVr1hAKhTh//vycIGsYxrzrZQ3DoLe3l9bWVmZmZpiZmQEuTlO2LAufz4fjOO75fr+fpqYmUqkUlmXhOM4VKyCLiIiIiIhI9Sy7qcWX8vl8BAIBOjs7qVQqdHZ24vX+n2y+0GBzpVLBcRxaWlrI5XIUi0XgYs+lsbExPB4PXq+XUChEe3s7mUyGfD5Pc3MzgUBAIVZERERERKSGlnWQrVQqeL1e/vznP2OaJrfffjttbW3ztsmZZRgGlmWRz+fdalmza2vD4TCmaWJZFvF4nJGREWzbxufzce7cOaanp7EsC49nWX9sIiIiIiIiy9qynlpcKBQoFAqkUikmJyd54IEHiMVilEolkskkxWIRwzAwTROPx0NTUxP19fU0NjYSDocZGRnBNE2CwSArV67EsiwSiQSpVIpsNkt7ezuJRIJoNEokEiGdTpPNZjUiKyIiIiIiUkPLOsjm83ls26axsZFgMEg2m+WOO+6gqamJc+fOkclkiEQi+P1+1q5dSyAQYHx8nPr6ej73uc+Ry+U4e/YsPp+P8fFxBgcHKZVKwMVqWpFIhNWrVxOJRLAsizNnzpDP52v81CIiIiIiIp9tyzrIOo5DPB6noaEBv99PJBIBoKmpiZaWFrdwUyQSIZFIuGth6+rqOHHiBJFIhPr6ejZs2MDk5CR/+tOfGBkZoVwu09nZybp16/D7/fT39zMzM0Mul6NcLtfykUVERERERD7zlnWQhYstcCKRCPF4nJaWFoLBIIFAgGKxSEtLC47jYJomhmEwNTVFKBRi9erV/PGPf2RmZoZbb72ViYkJmpub+eIXv0ilUuHcuXOYpkk+n+fPf/4zqVSKRCLBzMzMggWkRERERERE5OZY9kG2WCySTCZpaGjg2LFjeL1eOjs7WbVqFZOTk3i9XhzHobGxkcHBQaampigWi5w5cwbTNOnq6iIajRIMBkmn09i2TS6Xm7Metq6uDsdxSCaTbqEnrZMVERERERGpjWUdZE3TxOv1kk6n8fl8lMtlbNtmZmaG8fFxGhoaiEaj5HI5hoeHicfjFItFTp06RWdnJ4lEggMHDhAKhfB6vUxOTpLJZGhpaaG3t5fz588zNTVFLpcjlUrh8XjweDzqIysiIiIiIlJDyzrIlstlN1BOT0+7RZ/K5TKZTIbR0VHS6bTbjicQCADQ09PjttGZHZkNBAKUSiUikQiFQoELFy6QyWSwbdsdnZ2dVmyaZm0eWERERERERJZ3kA0EAgSDQQzDoFAoMDExQTAYpKWlBb/fj+M42LbtVjcuFouYpkk6nWZ6eppCoeAGWq/XSyQSoa6uDp/PRzqdJplMMjMzg23beDwe6urqgIsBOpvN1vjpRUREREREPpuWdZDN5/Pk83m3R2xjYyOpVIrh4WEikQjBYJDOzk4CgQB1dXVUKhUaGxtZt24dyWSS8+fPk0gkKJVKZLNZEokEIyMjFAoFbNumXC5jmiYNDQ3U1dWRTCZJpVIq+CQiIiIiIlJDnsUc/NJLL7FhwwYikQixWIytW7fS398/55hNmzZhGMacn29+85tzjhkcHGTLli2EQiFisRjPPPMMtm1f90M4jsPExAQXLlzAtm3q6+spl8tMT08zODjImTNnOHnyJIODg/T39/NP//RP/N//9//NoUOHOHz4MEeOHOH48eOcPXuWVCpFuVzG5/PR3NxMfX09hUKB8+fPk0wmFWJFRERERGRBSzUzfdosakT24MGD7Nixgw0bNmDbNs899xybN2/m+PHjhMNh97jt27fz4osvutuhUMj9vVwus2XLFtrb23n33XcZGRlh27ZtWJbFnj17rushLMvC7/eTzWbJZDJkMhk8Hg9+v59QKOSumy2Xy8zMzFAqlfB4PBiGgcfjcXvNGobhVicuFotMTU3NWRfr8/koFAoq9CQiIiIiIvNaqpnp08aofIIhxng8TiwW4+DBgzz44IPAxW8X1q9fz8svvzzvOfv37+fRRx9leHiYtrY2APbu3cvu3buJx+P4fL6rXjeZTBKNRufs83q9eL1ebNumUqngOM6c0VPDMLAsC6/X64bX2SrHsyF39txZHo/H7UHr8XgolUqUy2X39UQiQX19/TV/XiIiIiIi8tlS68y0iS/jNawb9jyLYVdKvMUbVclNi5pa/HGJRAKApqamOft/9rOf0dLSwtq1a3n22WfnFEY6dOgQ69atc/8gAA8//DDJZJJjx47Ne51CoUAymZzz83GXFnUC8Pv9+Hw+AoEAlnXxD1csFslms6TTaaampkgkEmQyGfc8wzDwer0Eg0H3PMdxKBaL5PP5OSFWRERERETkapZSZvo0ue5iT47j8NRTT/HAAw+wdu1ad/9Xv/pVenp66Ozs5MiRI+zevZv+/n5+/etfAzA6OjrnDwK426Ojo/Ne66WXXuJ73/veNd/b7AgrXByJne03OzsqaxgGxWIRuDgt2TRNd2TWtm1yudw1XUfrZUVEREREZCFLITPZlKBGscWmBFQnN113kN2xYwdHjx7lnXfembP/G9/4hvv7unXr6Ojo4KGHHmJgYIA1a9Zc17WeffZZdu3a5W6fOXOG9evXX9O5lUplzqLo2QC70PZipFKpy6Y4i4iIiIiIwNLITO/w2+u7+RuoGrnpuoLst7/9bfbt28fbb79NV1fXFY+97777ADh16hRr1qyhvb2d9957b84xY2NjALS3t8/7Hn6/H7/f72739PQAFyt53ewgmUwm6e7u5vjx43R2dt7Ua4uIiIiIyPLwWc5MUP3ctKggW6lU2LlzJ7/5zW9466236O3tveo5hw8fBqCjowOAjRs38oMf/IB/+Id/YO/evYyOjtLR0UE4HKavr++a7sPjubi0NxqN1qzY0ooVK9z7EBERERERgRubmcbHx/nFL37BD3/4Qy5cuIDH4yGTyVzTfSyFzATVy02Lqlr8rW99i9dee4033niD22+/3d0fjUYJBoMMDAzw2muv8cgjj9Dc3MyRI0d4+umn6erq4uDBg8DF9au9vb2cP3+eF154gY6ODv7+7/8egHPnzhGLxa56H7MVuGpRNbiW1xYRERERkaXtRmWm9evX4/F4OHHiBDt37uTVV1+lp6eHs2fP0t/ff9XcVOvcUu3rLyrIGoYx7/5XX32Vr33tawwNDfH4449z9OhRMpkM3d3dfOUrX+H555+fc/Pr169nenqaeDxOOBxm27Zt/PznP2fnzp185zvfuep9KMiKiIiIiMhSdKMy07lz57j77rtJp9M0Njby5JNPsmfPHnp7e68pN9U6t1T7+oueWnwl3d3d7rcICykWixw9epRf/vKXbN261d0/MTHBoUOHruk+/H4/L7zwwpw54DdLLa8tIiIiIiJL243ITHBxmnE6nb4sN33pS1+6ptxU69xS7etfd9Xi6zUxMUG5XJ63nPTJkyfnPadQKFAoFNxtx3HYtm0b+Xx+zv6b5emnnyYej9PZ2al1siIiIiIicsMtNjcttcwE1c1NNz3IXo/F9pG9WYaGhq5agUxERERERKTalmpmgurkppseZFtaWjBN0y0fPWtsbGzBUtIf74mUSCRYuXJlVe/zWkQikVrfgoiIiIiIfAotNjctlJn+ikfwYlX9fudjU+IdfluV3HTT58X6fD7uueceDhw44O5zHIcDBw6wcePGec/x+/3U19e7P7XogzSfhRZyi4iIiIiIfBKLzU0LZSYvFl6jRj//HqCrkZtqMrV4165dPPnkk3zhC1/g3nvv5eWXXyaTyfD1r3+9FrcjIiIiIiKy5Cg3LawmlYoee+wx/vEf/5Hvfve7rF+/nsOHD/O73/3usoXMC/nxj3+8qOuZponf7ycajRIOh2lpaaGrq4umpiaCwSB+vx/TNBf9TcFTTz01Z3twcJAtW7YQCoWIxWI888wz2La9qPcUERERERGBT5abFpuZqqkauWlRfWSXgtdff50nnniCUql0xeNM06S1tZX6+nocx8FxHLxeL6Zp4vP5WLFiBclkkpmZGWzbJp/PYxgGpVKJbDbLzMwMjuNc8RqXLlqebVrc3t7OD3/4Q0ZGRti2bRvbt29nz549N+z5RUREREREruTSzLSJL+M1arRGtlLiLd6oSm5adkH2vvvu4+677+aVV15Z8Ji6ujpaW1tpaWlheHiYeDxOKBQCIBqNEgqF3PLPxWKRVCqFYRik02kikQjNzc1kMhkSiQRTU1ML9oK6tLnv/v37efTRRxkeHna/Idm7dy+7d+8mHo/j8/lu5McgIiIiIiIyr0sz01IIstXITcuqCWqxWOT9999n06ZN877u8XhoaGigs7OTrq4uDMMgkUgA8PnPf57Ozk5s22ZycpJUKsXU1BTpdJpAIEClUnH3RSIRVq5cSVtbGytXrlzww8xms+7vhw4dYt26dXOG+R9++GGSySTHjh27cR+CiIiIiIjIAq6WmWqhGrlpWfSRnTXbFDgWi132msfjIRaLEQ6H8Xg8lEol4vG4+6G98847FIvFBd/b4/Fw6623Yts2hmHQ0NBAsVikWCxy2223cfr06Tl/AIDt27fzP//n/wRgdHR03mbFs6+JiIiIiIhU25UyU61UIzctqxHZK4lGowQCAXw+H6lUin/7t3/jzJkz7vrYK4VYn8/H//V//V/cfvvtRKNRMpkMIyMj1NXVMTk5SSaTYcWKFZedt2/fPgYGBqr5WCIiIiIiIstaNXLTsgqys02Bx8fH5+z3+Xy0tLQQj8f56KOPuHDhwhWD68c1NTXR0dFBKBQiHA5TLBZJJBIMDg6yevVqPB4PoVAIy7p8bvmpU6cAaG9vn7dZ8exrIiIiIiIi1bZQZqq1G52bllWQnW0KfPDgwTn7GxsbSafTZDKZRZdtNk2TiYkJ/vjHP+L3+7nllluYmppidHSUdDqNaZqsWLGCcrnsNhW+VEdHBwAbN27kww8/nPMf5s0336S+vp6+vr7reFoREREREZHFWSgz1dqNzk3LKsjCxabAP/3pT91tv99PY2Mj5XIZ0zQX/X7r1q2jsbGRfD7vTkeuVCqYpkmpVOL06dOMj4+TSqUum2d+//33c9dddwGwefNm+vr6eOKJJ/jggw/4/e9/z/PPP8+OHTvw+/2f6JlFRERERESu1cczU61VIzctuyD72GOP8f3vf9/drqurIxwO09HRsegWN6ZpsnLlSkzTpFKpMDQ0xPT0tNs/NpfLuYHWNM3LwvLrr78+57327duHaZps3LiRxx9/nG3btvHiiy9+wicWERERERG5dh/PTLVWjdy07PrIAiSTSaLRKIZhcOutt9Le3o7X6+V//a//RalUuuK5oVCIYrGIbdu0tLTw4IMP8r/+1/8iHo/T3t5OQ0MDMzMz2LZNpVKhrq6Ovr4+Lly4AMDx48fd6cuX9kMSERERERFZKmYz01LrI3ujLKv2Ox9nWRZ+v58777yT8fFxDMO46jnZbJa6ujpuv/12yuUy2WyWTCaDx+MhEAjg9/sJBoPk83nC4TCrV6+mUChg2zbhcBifz7fodbgiIiIiIiJy4yy7qcWXCofDhEIhzpw5Qzabvawf0ULS6TRjY2N0dnYyMTFBsVjEcRzi8TiVSgXHcbAsi6mpKcLhMI7jYJqm+yMiIiIiIiK1s6yDLIDX6+XEiROkUil6e3vnbZHzcbPrXc+ePUuhUMDjufgxhEIhUqkUhmGQyWSYmprCtm0CgQCmaZLL5dxjRUREREREpDaW9dTibDZLPp/H6/UyNTXF/fffT39/PxMTEwA4joPH48FxHLxeLw0NDUSjUSzLclv2NDY20trayooVK/B4PIyOjjI9PU0ikXBb8zQ1NdHW1sa5c+coFAo1fmoREREREZHPtmUdZAuFAtlsltbWVtasWUN9fT2f//znOX36NJlMhlQqhWmaxGIxotEokUgEj8fD2rVrCQQC2LbNqVOnOH/+PGNjY4yMjFAsFt33b2howO/3093dzeTkJJVK5arFpERERERERKS6lnWQBZiZmaFUKtHU1ERXVxd33nkn9fX1lMtlpqamCAaDNDU1EY1GSafTZDIZDMPg/PnzeDweurq6aG5u5vDhw2SzWeLxOHCxP21HRwctLS18+OGHbhue2dY8IiIiIiIiUhvLPshOTk4SDAb585//TDgcplKpUF9fT319Pd3d3fh8Prc6cT6fx7IsOjo6GB8fJ5FIEAqFcByHz33uc2SzWXw+H47j0NbWxtq1axkYGCCVSpHJZBgfH2cZdisSERERERH5VFn2QbZYLDI5OemOqpbLZW699VaSySR1dXXYtk0wGGTVqlW8//77+Hw+Tp48SXt7O6dPnyYQCHDhwgXWrFnDHXfcQaFQ4NSpU+RyOY4cOYJpmoRCIdLpNPl83m3xo0ArIiIiIiJSG8s6yHq9XizLIpvNEggEcByHcrnMmTNnaGhooL6+Hq/X64bSQqFAMpnkwoUL2LZNsVjk8OHDzMzMcPr0aUzTpFAoEAgEiMViJBIJJicnsW0bx3EwDAOv1+teR0RERERERG6+ZR1kHcchn88DF9fKNjY24vf7yefz5PN5hoaGyGQybkA1DINQKERPTw/19fVMTk5y7tw5AoEAAD6fD6/XSzQaJZPJYNs2Xq+XdDpNoVBwR2HVgkdERERERKR2lnWQtSwLr9dLJBIhm80yOTlJY2MjkUiEcrmMaZoA5PN5SqUSlUqFYrFIOBzmwoUL5PN5TNPEcRzC4TChUAifz0ehUMC2baampkilUti2jcfjIRQKYZomhmGQSCRq/PQiIiIiIiKfTcs6yBYKBQqFAvl83i3wlM/nSSaTBAIBIpEIvb297u+VSoVwOMydd95JLpfjzJkzJBIJd5pxIpEgkUiQTqcpFotuGI5Go9TV1bmvqXKxiIiIiIhI7SxqjuxLL73Ehg0biEQixGIxtm7dSn9//5xjNm3ahGEYc36++c1vzjlmcHCQLVu2EAqFiMViPPPMM9i2fd0PUS6XmZ6eZmpqyi3u5DgOU1NTnD59mhMnTvDhhx9y8uRJ/vVf/5V//ud/5pe//CX/+3//b44fP86JEyc4fvw4Z86cYWJiglKphN/vp7Gxkbq6OgqFAhcuXFCIFRERERGRK1qqmenTZlEjsgcPHmTHjh1s2LAB27Z57rnn2Lx5M8ePHyccDrvHbd++nRdffNHdDoVC7u/lcpktW7bQ3t7Ou+++y8jICNu2bcOyLPbs2XNdD2FZlrsONpvNks1m8Xg8WJZFIBBw761cLlMsFt3zHMdxjwuFQng8HhzHIZlMUiqVyOVy7rpY0zTx+Xzk83lVLBYRERERkXkt1cz0aWNUPkEqi8fjxGIxDh48yIMPPghc/HZh/fr1vPzyy/Oes3//fh599FGGh4dpa2sDYO/evezevZt4PI7P57vqdZPJJNFodM4+r9eLaZp4PB5KpdJl31YYhoFpmu66Wo/H4x7jOA62bWPb9pyQOnvObG/ZUqk0p1pxIpGgvr7+6h+UiIiIiIh8JtU6M23iy3gN64Y9z2LYlRJv8UZVctMnKr87W/Coqalpzv6f/exntLS0sHbtWp599lmy2az72qFDh1i3bp37BwF4+OGHSSaTHDt2bN7rzLbNufTn42zbdtfLwv8pBOXz+bAsC8MwsG2bXC5HKpUikUiQyWTIZDLkcjm3oJPX68Xv97s/juOQzWbJ5/NquSMiIiIiIouylDLTp8l1F3tyHIennnqKBx54gLVr17r7v/rVr9LT00NnZydHjhxh9+7d9Pf38+tf/xqA0dHROX8QwN0eHR2d91ovvfQS3/ve967pviqVypzR2NlRVdM03WA7W73YMAw38BaLRXdktlAoXPO1RERERERE5rMUMpNNCWoUW2xKQHVy03UH2R07dnD06FHeeeedOfu/8Y1vuL+vW7eOjo4OHnroIQYGBlizZs11XevZZ59l165d7vaZM2dYv379NZ378WB76RrZ+bYXI5VKXTbFWUREREREBJZGZnqH317fzd9A1chN1xVkv/3tb7Nv3z7efvtturq6rnjsfffdB8CpU6dYs2YN7e3tvPfee3OOGRsbA6C9vX3e95id5jurp6cHuFjJ62YHyWQySXd3N8ePH6ezs/OmXltERERERJaHz3JmgurnpkUF2Uqlws6dO/nNb37DW2+9RW9v71XPOXz4MAAdHR0AbNy4kR/84Af8wz/8A3v37mV0dJSOjg7C4TB9fX3XdB8ez8WlvdFotGbFllasWOHeh4iIiIiICNzYzDQ+Ps4vfvELfvjDH3LhwgU8Hg+ZTOaa7mMpZCaoXm5aVNXib33rW7z22mu88cYb3H777e7+aDRKMBhkYGCA1157jUceeYTm5maOHDnC008/TVdXFwcPHgQulpLu7e3l/PnzvPDCC3R0dPD3f//3AJw7d45YLHbV+5itwFWLqsG1vLaIiIiIiCxtNyozrV+/Ho/Hw4kTJ9i5cyevvvoqPT09nD17lv7+/qvmplrnlmpff1FB1jCMefe/+uqrfO1rX2NoaIjHH3+co0ePkslk6O7u5itf+QrPP//8nJtfv34909PTxONxwuEw27Zt4+c//zk7d+7kO9/5zlXvQ0FWRERERESWohuVmc6dO8fdd99NOp2msbGRJ598kj179tDb23tNuanWuaXa11/01OIr6e7udr9FWEixWOTo0aP88pe/ZOvWre7+iYkJDh06NO85hUJhTiXhXC7Hzp073VY7N1OhUGD37t1MTExQV1en6cUiIiIiIuK6EZkJLk4zTqfTl+WmL33pS/PmpqWUmWbvp5q56bqrFl+viYkJyuXyvOWkT548Oe85C5WS/s//+T9X5R6vxX/8j/+RoaGhqy7cFhERERERWazF5qalmJmgernppgfZ6/HxUtKJRIKVK1fW8I4uikQitb4FERERERGRBTPTX/EIXqya3JNNiXf4bVVy000Psi0tLZim6ZaPnjU2NnbNpaSXioXmv4uIiIiIiHwSi81NC2UmLxZeozZBln+fZV2N3HTTF3j6fD7uueceDhw44O5zHIcDBw6wcePGm307IiIiIiIiS45y05XVZGrxrl27ePLJJ/nCF77Avffey8svv0wmk+HrX//6Db+WYRiYpollWQQCAUqlEgDhcJhSqUShUMBxHIrFIo7jXHVxtoiIiIiIyM1wM3PTclOTIPvYY48Rj8f57ne/y+joKOvXr+d3v/vdZQuZF/LjH//4iq8bhoHX66WhoYH6+noMw6BYLBIOhzFNk0AgQCwWY3p6mnQ6TblcplgsYts2juOQzWbdnyt56qmn+MlPfuJuDw4O8rd/+7f8f//f/0ddXR1PPvkkL730El7vsliKLCIiIiIiS8gnyU1Xy0w3UzVy06L6yC4Fr7/+Ok888YQ7svpxhmHQ2NhIR0cHhmEwPDxMsVgkEAhg2zbd3d04juMeXyqVSCaT+Hw+EokEfr+faDRKIBBgeHiYqampBUdpL62+Ndu0uL29nR/+8IeMjIywbds2tm/fzp49e278ByEiIiIiIjKPSzPTJr5cszWydqXEW7xRldy07ILsfffdx913380rr7xy2Wsej4e2tjZaW1tpbm7m+PHjjI2N0dzczOrVq5mennZHWR3Hcfsseb1eAoEAo6OjOI5DNBpl5cqVlMtlxsfH3dLXH3dpc9/9+/fz6KOPMjw87H5DsnfvXnbv3k08Hsfn81XrIxEREREREXFdmpmWQpCtRm666cWePoliscj777/Ppk2bLnvN4/GwYsUKPB4P6XSaqakpMpkMAKlUin/7t3/j1KlTDA8PMzw8zOjoKNPT00xPTxOPxzFNkwceeIBbbrmFWCxGV1cXwWAQy7Lo6uqat4HvpVOPDx06xLp16+YM8z/88MMkk0mOHTt24z8MERERERGRj7lSZqqVauSmZRVkZ0dGY7HYZa+1tLRgWRapVIpz587x4Ycfkk6ngYt/zPlGVGfdcccdfPGLX6Suro7GxkbC4TAffvghAPl8nlKpRGdn52Xnbd++3f19dHR03mbFs6+JiIiIiIhU25UyU61UIzctqyC7EL/fT0NDA+fPnyeTyVAul+esg72aQqHA8PAw2WyW5uZmEokEAOPj46xcuZJgMEh3d/dljXz37dvHwMDADX0WERERERGRT5Nq5KZlFWRnmwKPj4/P2d/Q0MDk5ORVR17n09XVRTqd5sKFC8zMzHD06FFSqRSpVIpisegG43g8TiQSuayZ76lTpwBob2+ft1nx7GsiIiIiIiLVtlBmqrUbnZuWVZCdbQp88ODBOftaWlrcP9himKbJ2rVrCYVCjIyMEAwGufPOO4GL1Y9LpRJTU1OEw2HK5TKNjY2XBdmOjg4ANm7cyIcffjjnP8ybb75JfX09fX191/vIIiIiIiIi12y+zLQU3OjctKyCLFxsCvzTn/7U3Y5EInR0dGDb9oJtci51adgNhUIkk0nS6TSJRILBwUFmZmbcqcn5fJ5KpUJdXd2cCsez7r//fu666y4ANm/eTF9fH0888QQffPABv//973n++efZsWMHfr//Bj29iIiIiIjIlX08M9VaNXLTsguyjz32GN///vfd7aamJtra2ujo6LimdbEtLS10dHRgmiZr1qzB6/XS1NQEXAy5qVSKQCCAZVkEAgG8Xq87Cuvz+eYE2ddff9393TRN9u3bh2mabNy4kccff5xt27bx4osv3qhHFxERERERuaqPZ6Zaq0ZuWnZ9ZAGSySTRaBTTNLnzzjtZvXo158+f5/Dhw9cUZhsaGrj11lspl8v09fVx+vRp/vf//t/09fVRKpWwLIupqSm8Xi/hcJhwOEw6nSYQCPDRRx+5bX0u7YckIiIiIiKyVMxmpqXWR/ZGWXYjspcKBAKYpsnx48cBCIfD13TezMwMp0+fZsWKFVy4cIHp6WkAzp8/j2VZbmidmJhgamqK9vZ2bNumVCppmrCIiIiIiEiNLesgC+DxeJiZmSEYDNLa2gpcLNTk8XguK8x06WuWZTE2NsbU1BSlUgmPx+OutfV4POTzebLZLKZpYpomra2teDyeRVdFFhERERERkRvLe/VDlq5CoYDjOHR1dVEsFuns7GR8fJx0Ok2lUsHj8cwJn+3t7dxyyy2cP3+e7u5uUqkUoVCIe+65h7Vr15LL5Th58iTpdJqZmRng4ihvJpOhs7OTEydOUCqVavjEIiIiIiIisqyDrG3bpFIpYrEYPT09NDU1YVkWx44dY2Jiwh199fv9NDc3093djWma/If/8B+4//77OX36NIcOHeLo0aMAfPjhh26lYrg42muaJoFAAIB8Pu9WLxYREREREZHaWNZBFi4WXPJ4PMRiMVpbW91CTENDQ9i2TV1dHU1NTXR2duLz+RgZGcHv9/OLX/yCVatWsXbtWvr7+8lms1iWRS6Xc9+7ra2NO++8k3Q6TTabpVAoaGqxiIiIiIhIjS37IJtOp2lqauLw4cN4vV7a29vp6+ujr6+PYrFIKBQiEAgwMzPD8PAwt9xyC3fddRfFYpFUKkU4HGbVqlWcOnWK22+/nePHj2MYBtFolI0bNzI6Osro6CgAU1NTNX5aERERERERWfZBtlAoMD09TUNDA3/6059obGyku7vbDbXlcplsNktzczPHjh1jZGSE9957j0KhQDgcprm5mVKphGEYZDIZWlpaSKVSOI5Df38/0WgUv9/P5OQk+Xzenap86citiIiIiIiI3DzLOshaloXjOCQSCfx+P6ZpEo/HKRQKBINBJiYmyOVyFItFPB4P2WyWTCbDzMwM9fX11NXVMTg4SDqdxjRNSqUShUKBUChEJBIhm80yNjZGsVgkm81iGAamadb6sUVERERERD7TlnWQnR1JLZfLxONxmpqagIvTjb1eL/39/aTTafx+P5lMBtu2aWxspKuri0KhwOnTp5mensY0TTcUR6NRVq5cSTqdJpVKuf1jS6USlUoFx3G0TlZERERERKSGlnWQNU2TcDhMXV0dyWSSyclJGhsb8Xq95PN5vN6Lj5fNZt22ObPBdbYC8ewoazAYJBwO4/f7mZmZIZ/Pk0qlSKfTlMtlDMMgHA7j8/koFApks9laPrqIiIiIiMhn1rIOsuVymWQySTqdpq6ujmg0SqlUYnR0FJ/PR319PbfccgvhcBjbtgmFQtTX13PrrbeSyWQYGxsjkUhQKpXI5XIkk0kmJiZIp9MUi0Ucx8E0TRobG/H7/aRSKRKJBI7j1PrRRUREREREPrM8izn4pZdeYsOGDUQiEWKxGFu3bqW/v3/OMZs2bcIwjDk/3/zmN+ccMzg4yJYtWwiFQsRiMZ555hls277uh3Acxx2RLZVK+P1+SqUS8Xicjz76iA8//JCzZ89y4sQJ/vSnP/Hf//t/57/+1//KH/7wB/7t3/6No0ePcvToUU6dOuW+h8/no7GxkWg0Sj6fZ3R0lEwmoxArIiIiIiILWqqZ6dNmUSOyBw8eZMeOHWzYsAHbtnnuuefYvHkzx48fJxwOu8dt376dF1980d0OhULu7+VymS1bttDe3s67777LyMgI27Ztw7Is9uzZc10P4fP5ALBtm3Q6DYBhGFiWRTgcJhQK4fF4KJVKpFIpDMMgEAi4BZxmj2toaKBYLFIoFCgUCszMzFCpVICL05hnpxUrzIqIiIiIyHyWamb6tDEqs0ntOsTjcWKxGAcPHuTBBx8ELn67sH79el5++eV5z9m/fz+PPvoow8PDtLW1AbB37152795NPB53Q+mVJJNJotHonH2zbXEAd1rwpY/m8XgwTdP98fv97nHlctn9ufSc2fWzlmVhGAaFQmFOoadEIkF9ff21fVgiIiIiIvKZU+vMtIkv4zWsG/Y8i2FXSrzFG1XJTYuaWvxxiUQCwK0WPOtnP/sZLS0trF27lmeffXZOYaRDhw6xbt069w8C8PDDD5NMJjl27Nh134vjOORyObe/q9frxev14vP53KJPpVKJfD5PJpNhamqKdDpNNpt1A6rH48Hr9eL3+7EsC8uyqFQq5HI5stmsqhWLiIiIiMiiLKXM9Gly3cWeHMfhqaee4oEHHmDt2rXu/q9+9av09PTQ2dnJkSNH2L17N/39/fz6178GYHR0dM4fBHC3R0dH573W7FTfWbP/GRYyO7o6yzRNN6QGAgEA8vk8lUqFUCjkzjWfbbVzrXPPP8FgtoiIiIiIfMothcxkU4IaxRabi51jqpGbrjvI7tixg6NHj/LOO+/M2f+Nb3zD/X3dunV0dHTw0EMPMTAwwJo1a67rWi+99BLf+973rvdW54TaYrE457WrheIrSaVSl01xFhERERERgaWRmd7ht9f1fjdSNXLTdQXZb3/72+zbt4+3336brq6uKx573333AXDq1CnWrFlDe3s777333pxjxsbGAGhvb5/3PZ599ll27drlbs/MzNDT08Pg4OBND5LJZJLu7m6OHz9OZ2fnTb22iIiIiIgsD5/lzATVz02LCrKVSoWdO3fym9/8hrfeeove3t6rnnP48GEAOjo6ANi4cSM/+MEPGB8fJxaLAfDmm29SX19PX1/fvO/h9/vdQk6XikajNSu2tGLFCjyeT7TEWEREREREPmWUmeaqVm5aVJDdsWMHr732Gm+88QaRSMSdnx2NRgkGgwwMDPDaa6/xyCOP0NzczJEjR3j66ad58MEHueuuuwDYvHkzfX19fPGLXySRSDAxMUGlUuFv/uZv5v3gRURERERElosbmZmeeOIJPv/5z/OTn/yE8fFxOjo6+OCDD7j33ntr+YhLwqLa7xiGMe/+V199la997WsMDQ3x+OOPc/ToUTKZDN3d3XzlK1/h+eefn/MtwI9+9CP+7u/+Dq/XSzgcpru7m6GhIfr7+91vHK5ktpR0Ldrf1PLaIiIiIiKytN2ozHTu3Dm2bt3K4cOHqaur46//+q8xTZNf/epX15Sbap1bqn39RU8tvpLu7m4OHjx41ff553/+Z771rW/xox/9CLhYzau7u5uf/OQnfOc737nq+X6/nxdeeKEmI7i1vLaIiIiIiCxtNyoz9fT04PP52LFjx5zctH///mvKTbXOLdW+/qJGZG+EYrFIKBTil7/8JVu3bnX3P/nkk8zMzPDGG29cds7HS0k7jsPU1BTNzc0LfuNRTZVKhVQqRWdnp9bJioiIiIjIDbfY3LTUMhNUNzddd/ud6zUxMUG5XJ63L9LJkyfnPeeTtt+plqGhoatWIBMREREREVmsxeampZqZoDq56aYH2evx8VLSiUSClStX1vCOLopEIrW+BRERERERkQUz01/xCF6smtyTTYl3+G1VctNND7ItLS2Ypun2QZo1Nja2YE+khUpJ11qthuhFREREROTTbbG5aaHM5MXCa9QmyPLvi1irkZtu+gJPn8/HPffcw4EDB9x9juNw4MABNm7ceLNvR0REREREZMlRbrqymlQq2rVrF6+88gr/9E//xIkTJ/jbv/1bMpkMX//616/p/B//+MfXfC3TNAmHw9TX19PY2Eg4HKapqYlYLEYsFqOuro66ujpM01z0NwVPPfXUnO3BwUG2bNlCKBQiFovxzDPPYNv2ot5TREREREQEPlluWkxmqrZq5KaarJF97LHHiMfjfPe732V0dJT169fzu9/97rKFzPN5/fXXee655656nGmaNDc309jYiGEYlEol/H4/Xq8Xy7JoaWkhkUjg8XhIpVKkUinK5bJb7Sufz1MsFq9YPvvFF190fy+Xy2zZsoX29nbeffddRkZG2LZtG5ZlsWfPnmv7YERERERERP7d9eama81MN0s1ctNNb7/zSd13333cfffdvPLKK/O+bhgGjY2NtLS0UC6XSSaTtLS0MDw8TCgU4nOf+xyjo6NUKhU8Hg9dXV0MDAwwPT1NMBgkmUxSV1dHMBhkenqaqakpHMeZ91qXNvfdv38/jz76KMPDw+5/rL1797J7927i8Tg+n686H4iIiIiIiMglLs1Mm/hyzdbI2pUSb/FGVXLTsmqCWiwWef/999m0adO8r3s8HlpaWuju7sY0Tc6ePcvExAQAXV1deDwejhw5wuTkJJOTk1y4cIE//OEPTE5OEggECIfDpNNphoeHSSQStLS0XLHnUTabdX8/dOgQ69atm/PtyMMPP0wymeTYsWM37kMQERERERFZwNUyUy1UIzctqyA720spFotd9prH46GzsxPLshgdHWVoaMgdSR0cHOTEiRNcuHCB8fFxRkZGGB0dZWpqimQyST6fp6+vj3A4zF/8xV/Q0dFBfX09iUSCQqFAV1cXpmleds3t27e7v4+Ojs7b42n2NRERERERkWq7UmaqlWrkpmUVZK+kubkZy7KYmZlhbGyMdDpNpVKhUqmQyWQWnB7s8Xh44IEHCAaDFAoFotEojY2N2LZNW1sb6XQawzDo7Oy87Nx9+/YxMDBQ7UcTERERERFZtqqRm5ZVkJ3tpTQ+Pj5nfygUor6+nuHhYfL5/KLe0+v1YhgGf/7zn8lkMhw5coTp6WkKhQJTU1OsXLmScrlMa2srXu/ltbFOnToFQHt7+7w9nmZfExERERERqbaFMlOt3ejctKyC7GwvpYMHD7r7DMMgFouRTCYpFAoLjrzOMk0Ty7q42NmyLP7iL/6CRCJBIpHAMAwsy8Lj8WDbNtlslkKhQKlUYmZmhra2tsvWy3Z0dACwceNGPvzwwzn/Yd58803q6+vp6+u7UR+BiIiIiIjIgubLTEvBjc5NyyrIwsVeSj/96U/d7WAwSF1dHfX19VftA+v1eqmrq3MrYQWDQerr6zl58iTlcpmenh4Mw8BxHMrlMgCFQgHLsigUCnPOBbj//vu56667ANi8eTN9fX088cQTfPDBB/z+97/n+eefZ8eOHfj9/hv8KYiIiIiIiMzv45mp1qqRm5ZdkH3sscf4/ve/724HAgEMw8C27Sv2fIX/05qnWCxiGAZtbW3MzMwQjUZJJBIA3Hnnne6xtm1TKBSIRCJ4PB48Hg+GYbiB+fXXX3ff2zRN9u3bh2mabNy4kccff5xt27bN6ZkkIiIiIiJSbR/PTLVWjdy07PrIAiSTSaLRKAArV66kra2N8+fPMzIyctVzV69ejcfjYXR0lNWrV1NXV0dHRwcnTpygvb2deDzuVjK2LMsdgS2VSsRiMU6cOEG5XKZQKMzphyQiIiIiIrJUzGampdZH9kZZdiOylzIMg3A4TDQadacCX83p06eJx+OsW7cOuNhftq6ujm3btuHxeEin0zQ3NxMMBoGL5avD4bC7BjcUCmHbdtWeSURERERERK5sWQdZv9+Pz+fjwoULRKPRy6oKL7RmNpFIcPr0aZqbmzl27BiDg4P8p//0nzAMA4/Hw/j4OH6/n0KhQCqVorGxkVAoRKVSwe/3X3NoFhERERERkRtvWQfZ2T6xk5OThEIhAoEAgLuedXZN68f5/X4ikQipVIqGhgaSySSBQIBKpUJ3dzednZ1ks1kmJiYwDIOWlhZWrFhBIBAgm83e7McUERERERGRS1zeGHUZKRaLlEolbr/9dmKxGJlMhrNnz+I4jlv4qVKpuAWaWlpa6O7uxrZtWlpayGazNDQ0kEgk8Pl85HI5pqenicfjzMzMUKlUCIVClEolPB4PyWSSYrFY46cWERERERH5bFvWQbZSqZDP5/H7/TQ2NnLPPffgOA4zMzNMT0/jOI4bYpubm+no6CAajWJZFv/hP/wHCoUC+/btI51Ok81mGR8fJ5PJzOlFu2LFCvr7+wkGg+RyOQqFQg2fWERERERERJZ1kAWYnp7m3LlzVCoV7r77bhKJBIlEgoGBAeBieedoNEpfXx9+vx+/308sFuN//I//wbp161i3bh3Hjh2jVCph2/acEOvz+QgGg7S1tZHJZBgdHcW2bSzLolQq1eqRRUREREREPtOWfZBNp9O0trYyNDREuVxm1apV9PT0cMstt7gtdHp6ekgkEhSLRSzLoru7m1wux8DAALFYjN7eXnek9ty5c6TTaSzL4nOf+xz19fWcPHmSYDBIOp1ecN2tiIiIiIiI3BzLPsjats309DSNjY2cPXuWmZkZVq1aRTQapa2tzW2j09zczB/+8AfC4TB//OMfmZ6exu/3Mzo6yq233srZs2cJBoN0dXUxNTVFsVjEtm2y2Sw+n49EIkE2m8Xj8RAKhbRWVkREREREpEaWdZC1rIuNfROJBJVKBZ/Px/T0NJZlcfr0aZqamigUCpTLZXw+H8Vi0S0IFQwGsSyL4eFh8vk8hmEwPDyMz+fDNE26urrI5/OMjIzgOA7ZbBbTNPF4PJpWLCIiIiIiUkPLOsiWy2V3TWsqlSISieA4DolEgmg0ykcffeSG19lKxqtWrSIcDgMwOjpKMpkkm81SKpXw+XzYtk1bW5vbnscwDLLZLPl83q2ErD6yIiIiIiIitbOsg6xpmoRCIYLBIPl83g2ws6GzUqmQy+XcIk6O4zAwMEBHR4e7fza8+nw+mpubCYfDFItFhoaGyOVyTE1NUS6XMQyDuro6PB4PjuOQTqdr/fgiIiIiIiKfScs6yJZKJUqlErlcjrq6OhoaGiiXy4yNjeH1emltbWX16tX4/X4sy8I0TSKRCLfddhu5XI7x8XESiQSFQoFSqcTMzAwjIyPk83kymQyVSgXTNKmvrycQCJDL5Uin03MqG4uIiIiIiMjN5VnMwS+99BIbNmwgEokQi8XYunUr/f39c47ZtGmT27t19ueb3/zmnGMGBwfZsmULoVCIWCzGM888g23b1/0Q5XKZRCLB5OQkpVKJUCiEYRjE43EGBgY4efIkH330EWfOnOHYsWP86le/4r/9t//GO++8w+HDhzly5Ah/+tOfOHXqFJOTk25v2oaGBiKRCKVSifHxcVKplEKsiIiIiIgsaKlmpk+bRY3IHjx4kB07drBhwwZs2+a5555j8+bNHD9+3F13CrB9+3ZefPFFdzsUCrm/l8tltmzZQnt7O++++y4jIyNs27YNy7LYs2fPdT2EZVluEabZKb+GYeDz+QiHwwQCAQzDoFwuuyOqlmWRy+UwTRPTNGloaMA0TRzHIZPJUCwWSSaTbnD1eDxYlkWhULiuexQRERERkU+/pZqZPm2MymwFo+sQj8eJxWIcPHiQBx98ELj47cL69et5+eWX5z1n//79PProowwPD9PW1gbA3r172b17N/F4HJ/Pd9XrJpNJotHonH2maeL1evF4PBSLRbe40yzDMLAsC8Mw8Hq9mKZJqVTC4/Fg2zblcplyuTznHI/Hg2maWJaF4zju+85KJBLU19df8+clIiIiIiKfLbXOTJv4Ml7DumHPsxh2pcRbvFGV3LSoqcUfl0gkAGhqapqz/2c/+xktLS2sXbuWZ599lmw267526NAh1q1b5/5BAB5++GGSySTHjh2b9zqFQoFkMjnn5+PK5TKFQoF8Pg+Az+fDsiz339kR20KhQCaTIZlMksvl3NHX2YJOPp+PYDBIIBBwA+xs1WJNKxYRERERkcVYSpnp0+S6iz05jsNTTz3FAw88wNq1a939X/3qV+np6aGzs5MjR46we/du+vv7+fWvfw1cbHlz6R8EcLdHR0fnvdZLL73E9773vWu6r0ql4o6uzpodgbUsyw21uVyOSqWC3+/HNE0KhYJ7bqlU4loGqj/BYLaIiIiIiHzKLYXMZFOCGsUWmxJQndx03UF2x44dHD16lHfeeWfO/m984xvu7+vWraOjo4OHHnqIgYEB1qxZc13XevbZZ9m1a5e7febMGdavX3/N51+6KHp2xHZWqVS6rnuCi71rPz7FWUREREREBJZGZnqH317fzd9A1chN1xVkv/3tb7Nv3z7efvtturq6rnjsfffdB8CpU6dYs2YN7e3tvPfee3OOGRsbA6C9vX3e9/D7/fj9fne7p6cHuFjJ62YHyWQySXd3N8ePH6ezs/OmXltERERERJaHz3JmgurnpkUF2Uqlws6dO/nNb37DW2+9RW9v71XPOXz4MAAdHR0AbNy4kR/84Af8wz/8A3v37mV0dJSOjg7C4TB9fX3XdB8ez8WlvdFotGbFllasWOHeh4iIiIiICNzYzDQ+Ps4vfvELfvjDH3LhwgU8Hg+ZTOaa7mMpZCaoXm5aVNXib33rW7z22mu88cYb3H777e7+aDRKMBhkYGCA1157jUceeYTm5maOHDnC008/TVdXFwcPHgQuFmXq7e3l/PnzvPDCC3R0dPD3f//3AJw7d45YLHbV+5itwFWLqsG1vLaIiIiIiCxtNyozrV+/Ho/Hw4kTJ9i5cyevvvoqPT09nD17lv7+/qvmplrnlmpff1FB1jCMefe/+uqrfO1rX2NoaIjHH3+co0ePkslk6O7u5itf+QrPP//8nJtfv34909PTxONxwuEw27Zt4+c//zk7d+7kO9/5zlXvQ0FWRERERESWohuVmc6dO8fdd99NOp2msbGRJ598kj179tDb23tNuanWuaXa11/01OIr6e7udr9FWEixWOTo0aP88pe/ZOvWre7+iYkJDh06dE334ff7eeGFF+bMAb9ZanltERERERFZ2m5EZoKL04zT6fRluelLX/rSNeWmWueWal//uqsWX6+JiQnK5fK85aRPnjw57zmFQoFCoeBuO47Dtm3byOfzc/bfLE8//TTxeJzOzk6tkxURERERkRtusblpqWUmqG5uuulB9nospo/szTQ0NHTVCmQiIiIiIiLVtlQzE1QnN930INvS0oJpmm756FljY2MLlpL+eE+kRCLBypUrq3qf1yISidT6FkRERERE5FNosblpocz0VzyCF6vq9zsfmxLv8Nuq5KabPi/W5/Nxzz33cODAAXef4zgcOHCAjRs3znuO3++nvr7e/alFH6T5LLSQW0RERERE5JNYbG5aKDN5sfAaNfr59wBdjdxUk6nFu3bt4sknn+QLX/gC9957Ly+//DKZTIavf/3rtbgdERERERGRJUe5aWE1qVT02GOP8Y//+I9897vfZf369Rw+fJjf/e53ly1kXsiPf/zja76WaZoEAgEaGxtpbW0lHA7T2NhIR0cHLS0t1NXVUVdXh9/vX/Q3BU899dSc7cHBQbZs2UIoFCIWi/HMM89g2/ai3lNERERERAQ+WW5aTGaqtmrkpkX1kV0KXn/9dZ544glKpdIVjzNNk+bmZsLhMHBxaD4SiVAoFAgGg0QiETKZDPl8nnw+j+M4ZDIZyuUyuVzumqp7XbpoebZpcXt7Oz/84Q8ZGRlh27ZtbN++nT179tyYhxcREREREbmKSzPTJr6M16jRGtlKibd4oyq5adkF2fvuu4+7776bV155Zd7XPR4PDQ0NNDY2ksvlcByHzs5OhoaGaGxsJBaLkclkKBQKeDweLMvCNE0SiQQ+n4+xsTEMwyASiZDL5YjH4wt+O3Bpc9/9+/fz6KOPMjw87H5DsnfvXnbv3k08Hsfn81XnAxEREREREbnEpZlpKQTZauSmZdUEtVgs8v7777Np06Z5X/d4PDQ3N3PbbbeRTqcZGRkhmUxSqVRobm4mk8lw6tQpBgcHGR0dZXBwkFOnTnH69Gkcx2HlypUYhsHExASjo6NEo1Ha2toW7HmUzWbd3w8dOsS6devmDPM//PDDJJNJjh07dkM/BxERERERkflcLTPVQjVy07IKsrNNgWOx2GWveTweYrEY4XCYc+fOMT4+TqVSoVKpcOLECfr7+7lw4QKjo6NMTk4yNTVFMpkklUoRDodpaWnho48+4o477mDlypWEw2Gmp6fJ5XJ0dnZimuZl19y+fbv7++jo6LzNimdfExERERERqbYrZaZaqUZuWlZB9kpWrFhBXV0dk5OTjIyMMDtjena960IzqAOBAN3d3ZTLZdrb26lUKvj9fpqbm4lGoxQKBUzTnLeB7759+xgYGKjqc4mIiIiIiCxn1chNyyrIzjYFHh8fn7M/Go0SDAY5d+4cqVTqiu/R3NxMMBh0t2OxGJFIhHg8TiqVctfETk5Okkql6OjoIJVKEYlECAQCl73fqVOnAGhvb5+3WfHsayIiIiIiItW2UGaqtRudm5ZVkJ1tCnzw4EF3n2EYNDQ0MDExcdVKxnAxuM622VmxYgXNzc00NjZSLBYJBALccsstOI6DYRhuBWO/308qlXKbCl+qo6MDgI0bN/Lhhx/O+Q/z5ptvUl9fT19f3yd9dBERERERkauaLzMtBTc6Ny2rIAsXmwL/9Kc/dbcDgQBer/eaQmxnZyerVq1ypxmHw2EikQgHDx7klltuIZ1Oc/ToUcrlMpVKBcMw3KnFjuPQ0tIyp/DT/fffz1133QXA5s2b6evr44knnuCDDz7g97//Pc8//zw7duzA7/ff2A9BRERERERkAR/PTLVWjdy07ILsY489xve//3132+fz4ff7KRaLVz3XMAympqYol8sYhkFTUxP5fJ6HHnqIr3zlKzQ3N+P3+/F6vW54NQyDcDiMx+PB5/MRDAbxer3Axf5Ms0zTZN++fZimycaNG3n88cfZtm0bL7744o3/EERERERERBbw8cxUa9XITcuujyxAMpl0p/m2t7fT0NDAwMDAVUdlvV4vvb29OI5DMBgkHA5TV1fntus5ceIElmUxOjpKpVJxR2b9fj/j4+OsXr2a8+fP4zgO09PTc/ohiYiIiIiILBWzmWmp9ZG9UZbdiOzHBQIBd53r1di2zUcffcT58+fxeDyk02mKxSJ//OMfee+990in04yNjREKhdxR2JGREfx+P5ZlMT09jc/nI5PJ3IQnExERERERkfks6yDr8/kwTZNkMkldXZ1bxOlqCoUC2WyWSCTC1NQUlUqFhx56iFAoRC6XI5lMAhAKhSiXyyQSCVpaWgiHwxQKBcrlcjUfS0RERERERK5gWQfZSqWC1+tlZmaGcrnsFmIyDAOPxzOnMNMswzCor6+nvr6eYrFIb28vjY2N2LaNx+OhsbGRrq4uKpUKp0+fBqC1tRW4WBxqdsqxiIiIiIiI1Ia31jfwSZRKJUqlErfeeiter5dEIsHMzIxbcdhxnDnHd3V10dXVhdfrdVvu+P1+EokEb7/9NpVKhUAgwLlz54jH4+6a20gkQrFYJJlMYtt2LR5VRERERERE/t2yDrIA+XyecDhMNBrl7rvv5sMPPySZTLph1jAMKpUKDQ0NBAIBIpEIDQ0N/OVf/iWWZfHKK69QqVQwTZPR0VGSyeScolGhUIjx8XHy+TxwcVqyiIiIiIiI1M6yD7KpVIqPPvqIlStXctdddxEIBBgbG2N4eJhCoYBt21iWRV9fH6tXr2Z8fJwVK1bw//w//w+33norq1evpr+/n0QigeM4c0KsYRisXr0a27ZpbW1leHj4mvrVioiIiIiISPUs+yCbyWQoFAqcOnWKZDJJZ2cnd955Jz09PWQyGXK5HH6/n9tuu42xsTFWrFhBc3Mzd955J6lUitbWVnK5HJOTkwwPD9PQ0MDMzAwej4dIJILP56NUKpHNZsnlcpimqXWyIiIiIiIiNbTsg6zjOMzMzBCLxYjH4ziOQ09PD729vaRSKZqamgCwLIuPPvqIP/zhD6RSKVavXk1nZycjIyNUKhUsy2Lt2rXYts3Zs2dJJpO0tLS4U5STySTJZJJYLEY+n2d6errGTy4iIiIiIvLZtKyDrGmaeDwekskkXq/XHS2dmJjgww8/pK2tjbq6OrLZLMFgkImJCbq7uxkeHsayLBzHob+/n9WrV1OpVPjoo48IhUIAtLW1USwWicfjbqGnSqVCKpWq8VOLiIiIiIh8ti3rIFupVNw1q8lkksbGRrLZLOFwmIaGBo4fPw6AbdsUCgVKpRJ33nknoVCIc+fOcebMGRKJBMlkkmAwSDqdJhqNEovFCIfDTE1NUSwW3enLlUqFdDo9b1sfERERERERuTmWdZCdHYUNBoPk83kmJiYIhUIYhsHMzIzbksdxHGzbxnEcjh07RmNjI6Zpks/n8fl8AG5Bp2g0SqlU4vz58xQKBaampiiXyxiGQSgUwrIsyuUy6XS6xk8vIiIiIiLy2bSsg2yxWHT/jUQiBAIBHMdhYmKCVCpFc3Mzvb29BINBDMNw+8f29fUxPT3N2NiYO1KbTqeZmppidHSUfD5PNpvFcRw8Hg/RaBTLssjn86RSqcv604qIiIiIiMjNs6g5si+99BIbNmwgEokQi8XYunUr/f39c47ZtGmT27919ueb3/zmnGMGBwfZsmULoVCIWCzGM888g23b1/0Q5XKZmZkZpqenKZVKRCIRvF4vk5OTnD17lpMnT3LmzBmGhoY4fvw4P//5z/nVr37Fu+++y5/+9Cfee+89Dh8+zOnTp5mcnKRQKGBZFvX19YTDYQqFApOTk6TTaYVYERERERFZ0FLNTJ82ixqRPXjwIDt27GDDhg3Yts1zzz3H5s2bOX78OOFw2D1u+/btvPjii+72bAEluBg6t2zZQnt7O++++y4jIyNs27YNy7LYs2fP9T2E14tlWRQKBTKZDJlMBo/Hg8/nw+fzEQwG3fW02WwW27apVCrYto3H48Hr9RIMBvF4PFQqFXK5HMVikVQqRaVSAcDj8RAIBMjn8+4+ERERERGRSy3VzPRpY1Q+QSqLx+PEYjEOHjzIgw8+CFz8dmH9+vW8/PLL856zf/9+Hn30UYaHh2lrawNg79697N69m3g87q5ZvZJkMkk0Gp2zbzbMzgbUcrk8J3AahoFpmpimiWEY+Hy+OYF29t9LeTwePB6Pe26xWJwzIptIJKivr7+mz0pERERERD57ap2ZNvFlvIZ1w55nMexKibd4oyq56ROV300kEgBur9ZZP/vZz2hpaWHt2rU8++yzZLNZ97VDhw6xbt069w8C8PDDD5NMJjl27Ni81ykUCm4f19mfj7Ntm1wu51YXNk0Tn8+H3+/HsiwMw6BcLlMoFMjn8ySTSbLZLLlcjlKpRLlcxjRNLMvC5/NhWRZerxfHcSiVSuTzeU0rFhERERGRRVlKmenT5LqLPTmOw1NPPcUDDzzA2rVr3f1f/epX6enpobOzkyNHjrB79276+/v59a9/DcDo6OicPwjgbo+Ojs57rZdeeonvfe9713RflUqFcrnsbs+Opnq9XjwejxtqM5mMG3Y9Hg+lUskNrdcaWDXFWEREREREFrIUMpNNCWoUW2wutkqtRm667iC7Y8cOjh49yjvvvDNn/ze+8Q3393Xr1tHR0cFDDz3EwMAAa9asua5rPfvss+zatcvdPnPmDOvXr7+mcz8+ZTifz7u/l8tlt/Lx9UilUpdNcRYREREREYGlkZne4bfXd/M3UDVy03UF2W9/+9vs27ePt99+m66urisee9999wFw6tQp1qxZQ3t7O++9996cY8bGxgBob2+f9z38fj9+v9/d7unpAS5W8rrZQTKZTNLd3c3x48fp7Oy8qdcWEREREZHl4bOcmaD6uWlRQbZSqbBz505+85vf8NZbb9Hb23vVcw4fPgxAR0cHABs3buQHP/gB//AP/8DevXsZHR2lo6ODcDhMX1/fNd2Hx3NxaW80Gq1ZsaUVK1a49yEiIiIiIgI3NjONj4/zi1/8gh/+8IdcuHABj8dDJpO5pvtYCpkJqpebFlW1+Fvf+havvfYab7zxBrfffru7PxqNEgwGGRgY4LXXXuORRx6hubmZI0eO8PTTT9PV1cXBgweBi9N5e3t7OX/+PC+88AIdHR38/d//PQDnzp0jFotd9T5mK3DVompwLa8tIiIiIiJL243KTOvXr8fj8XDixAl27tzJq6++Sk9PD2fPnqW/v/+quanWuaXa119UkDUMY979r776Kl/72tcYGhri8ccf5+jRo2QyGbq7u/nKV77C888/P+fm169fz/T0NPF4nHA4zLZt2/j5z3/Ozp07+c53vnPV+1CQFRERERGRpehGZaZz585x9913k06naWxs5Mknn2TPnj309vZeU26qdW6p9vUXPbX4Srq7u91vERZSLBY5evQov/zlL9m6dau7f2JigkOHDs17TqFQoFAouNu5XI6dO3fOKdx0sxQKBXbv3s3ExAR1dXWaXiwiIiIiIq4bkZng4jTjdDp9WW760pe+NG9uWkqZafZ+qpmbrrtq8fWamJigXC7PW0765MmT856zUCnp//yf/3NV7vFa/Mf/+B8ZGhq66sJtERERERGRxVpsblqKmQmql5tuepC9Hh8vJZ1IJFi5cmUN7+iiSCRS61sQERERERFZMDP9FY/gxarJPdmUeIffViU33fQg29LSgmmabvnoWWNjY9dcSnqpWGj+u4iIiIiIyCex2Ny0UGbyYuE1ahNk+fdZ1tXITTd9gafP5+Oee+7hwIED7j7HcThw4AAbN2682bcjIiIiIiKy5Cg3XVlNphbv2rWLJ598ki984Qvce++9vPzyy2QyGb7+9a/f8GsZhoHP5yMcDmOaJtlslmAwSDgcJpvNkslkME2TQqFAqVQCrr5AW0REREREpNpuZm5abmpScvexxx7jH//xH/nud7/L+vXrOXz4ML/73e8uW8i8kB//+MdXPcayLFpaWlixYgUrV66kvb2d5uZmurq66O3tZdWqVfT09LB69Wq6urpYvXo1K1asoL29ncbGRoLB4FWv8dRTT83ZHhwcZMuWLYRCIWKxGM888wy2bV/TM4mIiIiIiFzqk+Sma8lMN0s1ctOi+sguBa+//jpPPPGEO3r6cYZh0NzcTGNjI4lEgpaWFgKBAJFIhKmpKQC8Xi/FYhGv10s+n6dQKNDV1UWpVCKfzzM5OYnf7yebzTI+Pk65XJ73WpdW35ptWtze3s4Pf/hDRkZG2LZtG9u3b2fPnj3V+TBEREREREQ+5tLMtIkv12yNrF0p8RZvVCU3Lbsge99993H33XfzyiuvXPaa1+slFovR1dVFf38/qVSK2267jXA4TCKRIJfLYds2+Xwej8eD4zg4jkMwGKSjo8PtbXT8+HHK5TK33347mUyGoaGhecPspc199+/fz6OPPsrw8LD7DcnevXvZvXs38Xgcn89XxU9FRERERETkoksz01IIstXITTWZWny9isUi77//Pps2bbrsNdM06ejoIBqNMjIyQjKZxDAMJiYm+PDDDzl16hQXLlxgbGyMRCLB9PQ0iUSCQqFAa2srfr+f6elp/H4/vb29RKNRhoaGyGQy9Pb2zlsBLJvNur8fOnSIdevWzRnmf/jhh0kmkxw7dqwqn4eIiIiIiMilrpSZaqUauWlZBdnZpsCxWGzOfsMwaGtrwzRNbNvm/PnzwMVh64mJCYrF4oLvGY1GAchkMnR2djI9PU0qlSISidDc3Izf76dSqdDS0nLZudu3b3d/Hx0dnbdZ8exrIiIiIiIi1bZQZqqlauSmZRVkF9LY2Eg4HOb8+fN89NFHVCqVBSsP33HHHW4fI8Mw6Ovr49Zbb6VYLDIxMUFHRwd+v59MJuN+cxCPxwmHw5cVgNq3bx8DAwPVfTgREREREZFlrBq5aVkF2dmmwOPj4+4+j8dDQ0MDMzMzV6105fV6aWhocLc7OzvdtjulUgnHcchkMuRyOSqVCuVyGcdxsCyLbDY776jsqVOnAGhvb5+3WfHsayIiIiIiItU2X2ZaCm50blpWQXa2KfDBgwfdfeFwGJ/Pd8Xpw7Pa29vdqcKmaXL77bdTLBYZHBykra2Nuro62tra8Hq9WJaFZVnkcjkcx6FUKtHY2IhpmnPes6OjA4CNGzfy4YcfzvkP8+abb1JfX09fX98N+gREREREREQWNl9mWgpudG5aVkEWLjYF/ulPf+pu+3w+DMOYs4B4Pj6fj56eHtrb2/F6vTQ3N1Mul2lsbCQWi5FIJMhkMrz77rv4fD4cx8Hr9RIOh2ltbcU0Tfx+/5yiT/fffz933XUXAJs3b6avr48nnniCDz74gN///vc8//zz7NixY95CUSIiIiIiItXw8cxUa9XITcsuyD722GN8//vfd7fr6uqwLGvBvrKzTNPk+PHjnDhxgtbWVj73uc9h2zZ9fX3EYjGKxSLlcpmuri6CwSChUAgA27axLIvJyUlyuZxbHAou9me69P337duHaZps3LiRxx9/nG3btvHiiy/e4E9ARERERERkYR/PTLVWjdy07PrIAiSTSTdQdnV1sWLFCo4ePUomkwEuFnGa77G8Xq/bO/Zzn/sclmXR2tpKa2sr77//vttftqmpifb2do4dO8bg4CArV65kamqKhoYGKpUK58+fp1KpzOmHJCIiIiIislTMZqal1kf2RvHe0He7ybxeL6VSiXA4TCgUIpPJLBhiAbcYlMfjIRKJEAgEmJmZIZlMuuths9ks5XKZXC4HgOM4jI+PEwqF8Pv9lMvlm/Z8IiIiIiIicrllN7X4Uo7j4PF48Pl87lTgqw0wG4ZBT08PHo+HSqXCHXfcQX19PYZhYBgGoVCIrq4uCoUCw8PDAPj9fkKhEPX19W5FYxEREREREamNZR9kK5UKyWSSrq4uLOvikPlsn9hLGYbBqlWr+NznPseqVatYv349jY2NnD17lsbGRkKhEKZp0t3dzeTkJIODg24l5EAgQC6XI5fLUSwW531/ERERERERuTmWdZAFKJVKNDU10dHRQV9fH5ZlzTtiunr1arxeLx0dHUSjUVasWMG9997L+fPnGRkZwe/3UyqV+Jd/+Rf6+/vd4lGGYWBZFnV1de6UY43IioiIiIiI1M6yXiMLUCgUOHv2LPX19axZswa42FB3enoax3GwbZtIJEJXVxeO4+D3+7nlllt488036enp4a677qK/v5+pqSksy6JQKMx5/0AgQCAQoL29naGhocteFxERERERkZtr2QfZbDbL9PQ0mUwG27a56667yGazXLhwgUwmQy6Xw7Is6uvrMU2T/v5+Pv/5z3PnnXdy/vx5mpqaWLlyJYlEAtM0WbFihVuV2LIsGhsbsW2bsbExZmZmVOxJRERERESkxpZ9kHUch5mZGdrb2xkfH6erq4uenh56e3u5cOECgUCAuro66uvr+eCDD7Asi1deeYWGhgY8Hg8DAwNks1luu+02pqamcByH1atXMzk5SSQSobm5mVwuRz6fJ5VK0dTURKlUIpVK1frRRUREREREPpOWdZA1TROPx0OhUHB7yJ48eZI///nPVCoVWltbaWtr4/z589i2TbFYxDRNHMehUCjQ29vLn/70J7ci8djYGKVSiWKxSCwWo1KpMDw8jGmaZDIZd42sx7PslxaLiIiIiIgsW8s6yFYqFUqlEoZhMD09TXNzM4lEglAoRKVS4YMPPiAYDLqjqQDt7e14PB7y+Tzvv/8+MzMzpNNp/vjHP5JOp/H7/XR2duL1ekmlUvh8PtLpNOl0mkqlQi6XwzTNGj+5iIiIiIjIZ9eyDrKzPWT9fj/FYpF4PE5dXR2GYVBfX08gEGBycpJyuey26hkZGaG1tZVCoUAul8Pn8+Hz+QBoaWmhrq4O27aZmZkhm82SSqWwbRuPx0NdXZ0bYhOJRC0fXURERERE5DNrWQdZ27bdKcN1dXX4/X4AxsfHSSaT1NfXs2rVKiKRCOVyGcuyaG5uZtWqVaRSKaanp92+sJOTk0xOTjIyMkI+n6dQKOA4DqZp0tjYSCAQIJVKkUqlcBynxk8uIiIiIiLy2bWoxZ4vvfQSGzZsIBKJEIvF2Lp1K/39/XOO2bRpE4ZhzPn55je/OeeYwcFBtmzZQigUIhaL8cwzz2Db9nU/hOM4JJNJEokEpVKJUChEqVRicnKSwcFBTpw44faLPXXqFPv37+d//I//wb/8y7/w/vvv8/bbb/PBBx9w9uxZZmZmKBQK+Hw+GhsbqaurI5/PMzIyQjqdVogVEREREZEFLdXM9GmzqBHZgwcPsmPHDjZs2IBt2zz33HNs3ryZ48ePEw6H3eO2b9/Oiy++6G6HQiH393K5zJYtW2hvb+fdd99lZGSEbdu2YVkWe/bsua6H8Pl8mKZJoVAgnU4DYBgGlmXh8/kIhUKYpolt20xMTFCpVDAMw13vGg6H3QJOlUqFbDZLqVRiZmaGSqUCXCwsNdtndnafiIiIiIjIpZZqZvq0MSqfIJXF43FisRgHDx7kwQcfBC5+u7B+/Xpefvnlec/Zv38/jz76KMPDw7S1tQGwd+9edu/eTTwed9erXkkymSQajc7Z5/V68Xq9bhXj2TWxswzDcKsce71eTNOkXC5jGAblctmdpnwpj8eDaZpUKhU3CF/aRzaRSFBfX39Nn5WIiIiIiHz21DozbeLLeA3rhj3PYtiVEm/xRlVy0yfqIzNb8KipqWnO/p/97Ge0tLSwdu1ann32WbLZrPvaoUOHWLdunfsHAXj44YdJJpMcO3bsuu/Ftm3y+Ty5XA64GGxnCznNBtxyuUyxWHSLOGWzWTKZDPl8nnK57IZcy7Lw+/14vV4cx8G2bQqFwpwQKyIiIiIicjVLKTN9mlx3sSfHcXjqqad44IEHWLt2rbv/q1/9Kj09PXR2dnLkyBF2795Nf38/v/71rwEYHR2d8wcB3O3R0dF5r1UoFCgUCu72lSoGVyoVyuXynNBpmqY7CjsbVlOplDuK6/V6KRaL7sjsta6D1RRjERERERFZyFLITDYlqFFssSkB1clN1x1kd+zYwdGjR3nnnXfm7P/GN77h/r5u3To6Ojp46KGHGBgYYM2aNdd1rZdeeonvfe9713urlwXbS/df+sderFQqddkUZxEREREREVgamekdfntd73cjVSM3XVeQ/fa3v82+fft4++236erquuKx9913HwCnTp1izZo1tLe389577805ZmxsDID29vZ53+PZZ59l165d7vbMzAw9PT0MDg7e9CCZTCbp7u7m+PHjdHZ23tRri4iIiIjI8vBZzkxQ/dy0qCBbqVTYuXMnv/nNb3jrrbfo7e296jmHDx8GoKOjA4CNGzfygx/8gPHxcWKxGABvvvkm9fX19PX1zfsefr/f7RF7qWg0WrNiSytWrHArHYuIiIiIiIAy08dVKzctKsju2LGD1157jTfeeINIJOLOz45GowSDQQYGBnjttdd45JFHaG5u5siRIzz99NM8+OCD3HXXXQBs3ryZvr4+vvjFL5JIJNx2OH/zN38z7wcvIiIiIiKyXNzIzPTEE0/w+c9/np/85CeMj4/T0dHBBx98wL333lvLR1wSFtV+xzCMefe/+uqrfO1rX2NoaIjHH3+co0ePkslk6O7u5itf+QrPP//8nG8BfvSjH/F3f/d3eL1ewuEw3d3dDA0N0d/f737jcCWzpaRr0f6mltcWEREREZGl7UZlpnPnzrF161YOHz5MXV0df/3Xf41pmvzqV7+6ptxU69xS7esvemrxlXR3d3Pw4MGrvs8///M/861vfYsf/ehHwMVqXt3d3fzkJz/hO9/5zlXP9/v9vPDCCzUZwa3ltUVEREREZGm7UZmpp6cHn8/Hjh075uSm/fv3X1NuqnVuqfb1FzUieyMUi0VCoRC//OUv2bp1q7v/ySefZGZmhjfeeOOycz5eStpxHKampmhubl7wG49qqlQqpFIpOjs7tU5WRERERERuuMXmpqWWmaC6uem62+9cr4mJCcrl8rx9kU6ePDnvOZ+0/U61DA0NXbUCmYiIiIiIyGItNjct1cwE1clNNz3IXo+Pl5JOJBKsXLmyhnd0USQSqfUtiIiIiIiILJiZ/opH8GLV5J5sSrzDb6uSm256kG1pacE0TbcP0qyxsbEFeyItVEq61mo1RC8iIiIiIp9ui81NC2UmLxZeozZBln9fxFqN3HTTF3j6fD7uueceDhw44O5zHIcDBw6wcePGm307IiIiIiIiS45y05XVpFLRrl27eOWVV/inf/onTpw4wd/+7d+SyWT4+te/fk3n//jHP17U9Xw+H+FwmObmZiKRCLFYjK6uLmKxGMFgkHA4jNfrxev1LmoR8lNPPTVne3BwkC1bthAKhYjFYjzzzDPYtr2oexUREREREYFPlpsWm5mqqRq5qSZrZB977DHi8Tjf/e53GR0dZf369fzud7+7bCHzfF5//XWee+65qx4XCAQIh8P4/X7q6uooFAp4PB58Ph+RSASPx0M+n6e1tZVKpUIymcQwDHd/KpUil8tdsXz2iy++6P5eLpfZsmUL7e3tvPvuu4yMjLBt2zYsy2LPnj3X9sGIiIiIiIj8u+vNTdeamW6WauSmm95+55O67777uPvuu3nllVfmfd0wDOrr64nFYmQyGcLhMKFQiLq6OsbGxrAsi0AgQKFQwDAMcrkcqVQK0zTp6emho6OD8+fPMzU1RS6XY2JiglKpNO+1Lm3uu3//fh599FGGh4fd/1h79+5l9+7dxONxfD5fdT4QERERERGRS1yamTbx5ZqtkbUrJd7ijarkpmXVBLVYLPL++++zadOmeV+3LIvOzk5uu+02RkZGSCQSdHR0EA6HicfjZLNZxsfHOX36NENDQwwNDRGPx7Esi7a2NorFIpOTk1y4cIGhoSGi0SirV69e8MPMZrPu74cOHWLdunVzvh15+OGHSSaTHDt27IZ+DiIiIiIiIvO5WmaqhWrkpmUVZGd7KcViscte83q9dHV10dHRQTwep1QqEQgE+NOf/sQf//hH/vznPzM8PMzk5CSJRIJUKkUymcSyLNrb2zFNk1wuh23bRKNRVqxYwejoKAArVqzAsi7/FmP79u3u76Ojo/P2eJp9TUREREREpNqulJlqpRq5aVkF2YUYhkFHRwcAw8PDnD9/nlKpxOTkJKlUinK57B5rmqb7eyAQIBAIMDw8TCaTAWBmZgbDMHAch2g0SjKZxLbteeeh79u3j4GBgSo/nYiIiIiIyPJVjdy0rILsbC+l8fHxOfubmpoIh8MMDg4yPDyMbds4jnPZ+cFgkL/8y7+cc95DDz3EX/zFX2DbNjMzM0SjUfL5PNlslnw+j2malMtlgsEgdXV1l73nqVOnAGhvb5+3x9PsayIiIiIiItW2UGaqtRudm5ZVkJ3tpXTw4EF3n2maNDU1MT09PW94vVS5XCaZTAIXR2N9Ph9jY2NUKhX8fj+VSoVyuUw6ncbr9VIulzEMg0AggNfrpbGx8bL3nB0J3rhxIx9++OGc/zBvvvkm9fX19PX13YjHFxERERERuaL5MtNScKNz07IKsnCxl9JPf/pTdzsYDGKaJoVC4arn+nw+twJxT08Pt99+O8PDw+7Iq2VZWJaF3+/H6/W61Y3T6TQXLlygvr4er/f/dCy6//77ueuuuwDYvHkzfX19PPHEE3zwwQf8/ve/5/nnn2fHjh34/f4b+yGIiIiIiIgs4OOZqdaqkZuWXZB97LHH+P73v+9u19XVYRgGiURiwZ6vhmHQ2NjIHXfcwcqVKwkGg6xevZpIJMLtt99OOp1mamqKUChEKpUiGAxSKpXwer20t7fPGeIOBoPu76+//rr7u2ma7Nu3D9M02bhxI48//jjbtm2b0zNJRERERESk2j6emWqtGrlp2fWRBUgmk0SjUeD/VBQ+e/bsgsfPTg82TZO//Mu/pFKp0NbWRrlc5o9//KPbczabzeI4Dn6/n3w+T6VSoVAo0NXVxdGjR1mzZg3xeJyJiQlgbh9ZERERERGRpWI2My21PrI3ivfqhyxtXq+XUCiEx+NZcI1spVIhl8vh8Xj4f//f/xev18sXv/hFZmZm6OrqYnJykhUrVnDixAlaWlqwbZvu7m7Onz/P+fPnqVQqtLa2kkqlNE1YRERERESkxpbd1OJLWZZFc3Mz0WgUn8931eMdx8FxHEKhEJVKhcbGRkzTpKenh5aWFnw+HxMTE2QyGSYnJ5mYmKBSqbgteHw+37yVi0VEREREROTmWdZB1rZtJicnqa+vJxwOX/V4y7o4pN7W1oZt29i2TWdnJ62trYyPj+M4DpZl0dHRQbFYJJFIuOd6PB4ikYjbb1ZERERERERqY1lPLa5UKhSLRSYnJ4nFYszMzFAul+c91ufzcccdd1AoFGhtbeUv//IvKRQK/Ou//iurVq2iUqlgWRaO4zAyMsLY2Bi2bQMXA3A+n8fr9V61xY+IiIiIiIhU17IOsgDZbJa6ujpCoRDJZJILFy7Me9wtt9xCOp2mu7ublpYWAoEADQ0NnDlzhkAgQKlUIhqNcvTo0cta+RQKBWKxGOl0mnQ6fTMeS0RERERERBaw7INsLpdjdHSUSqVCR0cHuVyORCLhjswahkFzczPt7e0MDw8Ti8VYt24dx44dIxqNsmLFCi5cuEAul8Pr9eLxzJ1t7fF4aG5uZsWKFZw/f55sNluLxxQREREREZF/t+yDbKlUYnp6mkAgQDAYZP369di2zblz58jn8/j9fu666y4mJiZYvXo1vb29tLW1MTw8TDwep6uri4GBAdLpNH6/nzVr1vDnP/+ZYrGIz+ejq6sLn8/H6OgoiUTCnW4sIiIiIiIitbHsg+xsVeH6+nqSySSRSITe3l66u7uZnp7GsiyCwSDRaJShoSHefPNN3n77bYaHh6mrq8O2bZqamohEImSzWQqFArfeeiunT5+mqamJ5uZmMpmMO63Ysiy8Xi+5XK7Wjy4iIiIiIvKZtKyDrN/vx3EcSqUSExMThEIhpqamKBaLNDQ0EAgE8Pl8XLhwAY/Hg2VZWJbFwMAApmkSDAaZmJhgaGiIFStWEIlEiMfjzMzMuO18zpw5A0CxWKRcLuP1ejEMo5aPLSIiIiIi8pm2rINssVgELo7KZrNZt2hTIpH4/9n79yC56jvP+3yfPHnPqsy6Zt1VEuJmWUJlYyHLuLGm8cAMIsaie2KZ8YCwYx45PJY1BsUSMgRhwqwtPI03lt3xs6vH7GM802vCrGm7mVFbdvOwRjSN3LZpC91QgYQuJdX9kvf7OWf/KNexSipdSiiVVfjzishQ5slz8pyTpX8++fv9vl8GBwdJp9M0NDSQTCbJZrNYlkV3dzderxfLsjhy5AjZbBaPx8PU1BSVSsXtTdvc3EylUqG+vp5UKkUmk8G2bTfMioiIiIiISG0s6kQ2M8IaDAYpFAqMjY2RzWaJRqPU1dVRLpcZGRlxA+9Ma53W1lYcx6FcLuP3+/H7/YRCIerq6giFQti2TSaTIZfLkU6nKZfLGIZBJBLBNE33fREREREREbn2FnWQLZVKlEol8vm8uw62UqkwMjJCMpmkvr6eJUuW4Pf7qa+vx3EcotEoS5YsIZPJMDU1RblcBiCRSJBMJhkdHSWTyVAqlbBtG9M0iUajhEIhd62sesmKiIiIiIjUjufSu/zR008/zZo1a6ivrycej7Nx40b6+/tn7bN+/XoMw5j1+PKXvzxrn1OnTrFhwwbC4TDxeJxHH330A1UDtm2bbDbL5OQk5XKZcDhMpVIhkUhw+vRpTpw4wbvvvks6nebAgQP8/Oc/Z9euXbz11lu8/fbb/PrXv2b//v28//77TExMUC6XCQaDNDc3E4vFKBaLjIyMKMSKiIiIiMhFLdTM9GEzrxHZPXv2sGXLFtasWUOlUuHxxx/nrrvu4vDhw0QiEXe/zZs389RTT7mvw+Gw+9yyLDZs2EB7eztvvvkmQ0NDbNq0CZ/Px44dO67sJrxeTNOkXC67fV4Nw3CnHc+Mxk5OTlIoFKhUKng8HkqlEoZhEAwGZ11/JpOhXC6Tz+dxHAeY7idrmiaVSsXdJiIiIiIicraFmpk+bAznA6SysbEx4vE4e/bs4Y477gCmf13o6+vj2WefnfOY3bt3c++99zI4OEhbWxsAO3fuZPv27YyNjbnVgi8mlUoRi8VmbTNNE9M0MQwD27bPC5yGYbiBdybk2raN4zhUKhW3+vHZZsLrzOfPTDeekUwmiUajl/6iRERERETkT1KtM9N6PofX8F21+5mPilPmNV6uSm6a19TicyWTSQCamppmbf/Rj35ES0sLK1eu5LHHHnNHSQH27t3LqlWr3D8IwN13300qleLQoUNznqdYLJJKpWY9zmVZFqVSiWKxiOM4eL1egsEgoVAIn8+Hx+OhUqlQKBTI5/NuJeJsNkuxWHRHab1eL36/3y0kNVMUqlAoaFqxiIiIiIjMy0LKTB8mV1zsybZtHn74YW6//XZWrlzpbv/85z9Pb28vnZ2d7N+/n+3bt9Pf389Pf/pTAIaHh2f9QQD39fDw8Jznevrpp/nmN7952dc2M3d8ptqwaZr4fD73uWmapNNpt5fszKisZVlUKpXLnnuuKcYiIiIiInIhCyEzVShDjWJLhekZr9XITVccZLds2cLBgwd54403Zm3/0pe+5D5ftWoVHR0d3HnnnRw7dozly5df0bkee+wxtm3b5r4+fvw4fX19l3XsTEidK5zONZ14PtLp9HlTnEVERERERGBhZKY3+PmVXfxVVI3cdEVB9qtf/Sq7du3i9ddfp7u7+6L7rl27FoCjR4+yfPly2tvb+c1vfjNrn5GREQDa29vn/IxAIEAgEHBf9/b2AtOVvK51kEylUvT09HD48GE6Ozuv6blFRERERGRx+FPOTFD93DSvIOs4Dlu3buVnP/sZr732GsuWLbvkMfv27QOgo6MDgHXr1vHtb3+b73znO+zcuZPh4WE6OjqIRCKsWLHisq7D45le2huLxWpWbKmrq8u9DhEREREREbi6mWl0dJSf/OQnPPPMM5w5cwaPx0M2m72s61gImQmql5vmVbX4K1/5Ci+88AIvv/wyN910k7s9FosRCoU4duwYL7zwAvfccw/Nzc3s37+fRx55hO7ubvbs2QNMF2VatmwZp0+f5sknn6Sjo4Ovfe1rAJw8eZJ4PH7J65ipwFWLqsG1PLeIiIiIiCxsVysz9fX14fF4eOedd9i6dSvPP/88vb29nDhxgv7+/kvmplrnlmqff15B1jCMObc///zzfOELX2BgYIAHHniAgwcPks1m6enp4b777uOJJ56YdfF9fX1MTU0xNjZGJBJh06ZN/PjHP2br1q18/etfv+R1KMiKiIiIiMhCdLUy08mTJ1m9ejWZTIbGxkYeeughduzYwbJlyy4rN9U6t1T7/POeWnwxPT097q8IF1IqlTh48CAvvfQSGzdudLePj4+zd+/ey7qOQCDAk08+OWsO+LVSy3OLiIiIiMjCdjUyE0xPM85kMuflps9+9rOXlZtqnVuqff4rrlp8pcbHx7Esa85y0keOHJnzmGKxSLFYdF/bts2mTZsoFAqztl8rjzzyCGNjY3R2dmqdrIiIiIiIXHXzzU0LLTNBdXPTNQ+yV2K+fWSvlYGBgUtWIBMREREREam2hZqZoDq56ZoH2ZaWFkzTdMtHzxgZGblgKelzeyIlk0mWLFlS1eu8HPX19bW+BBERERER+RCab266UGb6NPfgxVf1651LhTJv8POq5KZrPi/W7/dz66238uqrr7rbbNvm1VdfZd26dXMeEwgEiEaj7qMWfZDmcqGF3CIiIiIiIh/EfHPThTKTFx9eo0aPPwToauSmmkwt3rZtGw899BCf+MQnuO2223j22WfJZrN88YtfrMXliIiIiIiILDjKTRdWk0pF999/P9/97nf5xje+QV9fH/v27eMXv/jFeQuZL+T73//+vM5nmibBYJBQKEQsFqO5uZm2tjba2toIBAKEQiH8fj+mac7r14KHH3541utTp06xYcMGwuEw8XicRx99lEqlMq9rFRERERERgQ+Wm+abmaqpGrlpXn1kF4IXX3yRBx98kHK5fNH9AoEAkUgEn89HIBDAMAwqlQqRSIS6ujoMw6BYLGJZFrZtUyqVcBwH27YpFApks1lyudxFy2efvWh5pmlxe3s7zzzzDENDQ2zatInNmzezY8eOq/odiIiIiIiIXMjZmWk9n8Nr1GiNrFPmNV6uSm5adEF27dq1rF69mueee27O903TpKGhgWg0SqVSoauri8nJSVKpFF6vF5/PR319PZVKBcMwyOVyZLNZbNumvr6exsZGLMsin8+TSqWYnJykVCrNea6zm/vu3r2be++9l8HBQfcXkp07d7J9+3bGxsbw+/3V+UJERERERETOcnZmWghBthq5aVE1QS2VSrz11lusX79+zvdDoRDd3d10d3czMjKCbds0Nze7C58BUqkUAwMDnDp1itOnTzM5OUk4HKa7u5u6ujpisRi5XI6hoSGCwSDLly+/YBPfXC7nPt+7dy+rVq2aNcx/9913k0qlOHTo0NX7EkRERERERC7gUpmpFqqRmxZVkJ1pChyPx897z+fz0d3dTUtLC9lsllAoRLlc5le/+hWHDx/mvffe4/Tp00xMTDA1NUUmkyGdTtPW1kZXVxcAXq+XoaEhALq6ukgmk/j9frq7u/F6z6+LtXnzZvf58PDwnM2KZ94TERERERGptotlplqpRm5aVEH2QjweD+3t7ZRKJaamppicnCSZTDI6Okoul8OyLBzHwTRNmpqa3OMaGhqYmpri/fffJ5PJuAHY5/ORTCZpbGykVCph2zYdHR3nnXfXrl0cO3bsWt6qiIiIiIjIolKN3LSoguxMU+DR0dFZ21tbW4lEIqRSKUZGRpicnJyz6lVLSws33nij+3rFihX8y3/5L1myZAmO45BKpSgWi+662Hw+Tzqdxuv14vF45pxifPToUQDa29vnbFY8856IiIiIiEi1XSgz1drVzk2LKsjONAXes2ePu800TWKxGFNTU6TTabLZ7AWPHx0d5ciRI8D0H/j48eMcP34cx3Hw+/1uwSfbtvH7/TQ0NADTw/PpdJrOzs7zPnNmpHbdunUcOHBg1n+YV155hWg0yooVK67G7YuIiIiIiFzUXJlpIbjauWlRBVmYbgr8wx/+0H0diUSwLItEInHJ3kPBYJCmpiZM0+T2229n+fLlTE1NYVkWuVyOYDCI4zhuL9lIJILjOITDYcrlMnV1dfh8f6z49alPfYpbbrkFgLvuuosVK1bw4IMP8vbbb/PLX/6SJ554gi1btlywWJSIiIiIiMjVdm5mqrVq5KZFF2Tvv/9+vvWtb7mvo9Eo5XKZYrF4wWNM06S3t5e1a9eycuVK7rzzTlpaWmhqaqK5uRnDMPB4PPj9ftra2txR2Uqlgt/vJxgMuucIBoPu57744ouzzrFr1y5M02TdunU88MADbNq0iaeeeqo6X4SIiIiIiMgczs1MtVaN3LTo+sjCdAudWCwGTFcXDoVC7pzrmdHUs2/LMAy3d+yaNWvo6+tjbGyMU6dO0dnZ6U4dnqnwNXO8z+djeHjYHfVtaGggmUwyMTEBzO4jKyIiIiIislDMZKaF1kf2all0I7LnMk0T0zRnBdizpwfPbEulUuTzefbt2+eWdb7++utJpVK8//77xGIxDMMgGo3S1tbG0qVLCQQC5PN58vk84XCYYrFIJBKpyX2KiIiIiIjItEUdZA3DwOfzsXTp0llrV2H2iOzZ25LJJG+++SZTU1MkEgkikQher5d8Ps/q1auxLMtdNzs0NITjOOTzebdqsW3b1+r2REREREREZA7eWl/ABzETMvP5/KwR2HPNvBcMBsnn80QiEUKhEJ2dnViWxbp163AcB9u2cRwHy7IYHx93KyA7jkMmk6G3t5exsbFrcm8iIiIiIiIyt0U9IgtQLpcZGRkhHA7P+f5MiL3hhhu47bbbuPnmm2loaODjH/84AO+99x5erxefz8eBAwdoaWnBtm2GhoYol8sA2LZNNpslFAphGMZFQ7OIiIiIiIhU16IekQUoFovEYjG8Xi/lcplMJjPrfcdxiEQi3HnnnfzjP/4jDQ0NdHd3E41GKRaLHDlyhHw+766zfffddxkbG5s1NXmm6vHk5CTpdHrOacsiIiIiIiJybSz6EdlCocDU1BTFYpHu7u7z1srCdFGn4eFhSqUSLS0t3HLLLfz2t7/l1KlTNDU1kUqlcByHlpYWt5fs2RobG4nH42SzWXe6sYiIiIiIiNTGoh+RLZfLbmlpx3Foa2tz182Wy2V6enr45Cc/yfvvv088Hsc0TTweD9lslkQiQUdHB8ePH6e3t5fu7m7y+TyZTIbJyUkMw6C1tZXu7m7Gx8fdzxQREREREZHaWfRBdqYS8Uyf2KamJnp7e0mlUkxOTtLW1sbRo0fdFjxTU1MMDQ3h9XpJpVKUSiXC4TBvvvkmXV1dTE5O0tvbi+M4RKNRWltbmZqaIp1Ok0ql8Hg8+P1+CoVCrW9dRERERETkT9KiDrLhcJhyuUylUiGRSBAMBkkkElQqFeLxOOFwmLq6OsbGxrAsC8uyyOfzDA4O0tXV5Y7cFgoFYrEYhUKBTCZDqVQCwOPxcOrUKSzLolgsYts2pmnW+K5FRERERET+tC3qIJvP593n2WyWQCCA1+slFApx9OhRJiYmOHz4MMVikUqlgsfjIRqNEg6HmZycJJFIuMWhfD4flUqFQCBAc3OzW704EAiQSqXI5XJuD1kVexIREREREamdRR1kQ6GQ2zqnVCoxMjKC3++nXC7T1NSEZVnkcjk3eFqWRSqVIhKJUC6XKZfL+Hw+/H4/wWCQuro6IpEIpVKJdDqNbdskk0mKxSKGYVBXV4fH48FxHNLpdI3vXkRERERE5E/Tog6yuVwOmJ4CHIlEaGhowLZtRkZGmJycpKmpic7OTvx+P9FoFI/Hg9frZdmyZZRKJbeAk2VZZLNZkskkExMTJBIJyuUytm3j9Xqpr68nEAi4haBmRmZFRERERETk2ptX+52nn36aNWvWUF9fTzweZ+PGjfT398/aZ/369RiGMevx5S9/edY+p06dYsOGDYTDYeLxOI8++iiVSuWKb8K2bdLpNBMTExQKBerq6vD7/UxMTHDy5EmOHj3K4cOHef/99zly5Agvv/wyL730Er/97W85cOAAv/vd79i3bx/Hjh1jdHTUnWLc0NBALBajXC4zPj5ONptViBURERERkQtaqJnpw2ZeI7J79uxhy5YtrFmzhkqlwuOPP85dd93F4cOHiUQi7n6bN2/mqaeecl+Hw2H3uWVZbNiwgfb2dt58802GhobYtGkTPp+PHTt2XNFNmKaJaZpUKhVyuRy5XA7DMPD5fNTX1+Pz+bBt2+0B6zgOpmlSKBTwer0EAgHC4TCO47itecrlMoVCwZ2WPHOOcrmsNbIiIiIiIjKnhZqZPmwM5wOksrGxMeLxOHv27OGOO+4Apn9d6Ovr49lnn53zmN27d3PvvfcyODhIW1sbADt37mT79u2MjY3h9/sved6ZvrFnM02TQCBAuVzGMAwqlcqs0VPDMDBNE6/Xi9frxTAM9/1KpYJlWef9wuHxeNxjALdy8YxkMkk0Gr3k9YqIiIiIyJ+mWmem9XwOr+G7avczHxWnzGu8XJXcNK+pxedKJpMANDU1zdr+ox/9iJaWFlauXMljjz3mrmUF2Lt3L6tWrXL/IAB33303qVSKQ4cOzXmeYrFIKpWa9TjXTGGnmRFTv9+P3+8nEAjg8/kwDAPLstwWO+l0mmw2SzabpVgsYlkWHo8Hn89HMBh0j7Vt223To2nFIiIiIiIyHwspM32YXHGxJ9u2efjhh7n99ttZuXKlu/3zn/88vb29dHZ2sn//frZv305/fz8//elPARgeHp71BwHc18PDw3Oe6+mnn+ab3/zmZV/bTEXiGV6vF9M03UDr8/lIp9Nuqx7HcSgUCti2jW3bs469GE0xFhERERGRC1kImalCGWoUWypM56pq5KYrDrJbtmzh4MGDvPHGG7O2f+lLX3Kfr1q1io6ODu68806OHTvG8uXLr+hcjz32GNu2bXNfHz9+nL6+vss+fmbK8LkB1bIsisXiFV0TQDqdPm+Ks4iIiIiICCyMzPQGP7+yi7+KqpGbrijIfvWrX2XXrl28/vrrdHd3X3TftWvXAnD06FGWL19Oe3s7v/nNb2btMzIyAkB7e/ucnxEIBAgEAu7r3t5eYLqS17UOkqlUip6eHg4fPkxnZ+c1PbeIiIiIiCwOf8qZCaqfm+YVZB3HYevWrfzsZz/jtddeY9myZZc8Zt++fQB0dHQAsG7dOr797W/zne98h507dzI8PExHRweRSIQVK1Zc1nV4PNNLe2OxWM2KLXV1dbnXISIiIiIiAlc3M42OjvKTn/yEZ555hjNnzrgdVi7HQshMUL3cNK+qxV/5yld44YUXePnll7npppvc7bFYjFAoxLFjx3jhhRe45557aG5uZv/+/TzyyCN0d3ezZ88eYHo677Jlyzh9+jRPPvkkHR0dfO1rXwPg5MmTxOPxS17HTAWuWlQNruW5RURERERkYbtamamvrw+Px8M777zD1q1bef755+nt7eXEiRP09/dfMjfVOrdU+/zzCrKGYcy5/fnnn+cLX/gCAwMDPPDAAxw8eJBsNktPTw/33XcfTzzxxKyL7+vrY2pqirGxMSKRCJs2beLHP/4xW7du5etf//olr0NBVkREREREFqKrlZlOnjzJ6tWryWQyNDY28tBDD7Fjxw6WLVt2Wbmp1rml2uef99Tii+np6XF/RbiQUqnEwYMHeemll9i4caO7fXx8nL179855TLFYnFWUKZ/Ps3XrVgqFwuVf/FVSLBbZvn074+Pj1NXVaXqxiIiIiIi4rkZmgulpxplM5rzc9NnPfnbO3LSQMtPM9VQzN11x1eIrNT4+jmVZc5aTPnLkyJzHXKiU9H/9r/+1Ktd4Of7Lf/kvDAwMXHLhtoiIiIiIyHzNNzctxMwE1ctN1zzIXolzS0knk0mWLFlSwyuaVl9fX+tLEBERERERuWBm+jT34MVXk2uqUOYNfl6V3HTNg2xLSwumabrlo2eMjIxcdinpheJC899FREREREQ+iPnmpgtlJi8+vEZtgix/mGVdjdx0zRd4+v1+br31Vl599VV3m23bvPrqq6xbt+5aX46IiIiIiMiCo9x0cTWZWrxt2zYeeughPvGJT3Dbbbfx7LPPks1m+eIXv1iV8xmGgc/nc3+hsG0bv9+PaZqkUim8Xi/lchnLsnAc55ILtEVERERERKrtWuemxaQmJXfvv/9+vvvd7/KNb3yDvr4+9u3bxy9+8YvzFjJfyPe///1L7uP1eonFYrS3t9PR0eH+29zczA033MCNN95IV1cXy5Yto6Ojg2XLltHT00N3dzednZ3U1dVdcgj84YcfnvX61KlTbNiwgXA4TDwe59FHH6VSqVzWPYmIiIiIiJztg+Smy8lM10o1ctO8+sguBC+++CIPPvgg5XJ5zvdN06S+vp66ujq8Xi8f+chH2L9/P/l8nmAwiMfjmbXYuFAokM1mKRQK+P1+WlpayOfzeL1ecrkcExMTlEqlOc91dvWtmabF7e3tPPPMMwwNDbFp0yY2b97Mjh07rv4XISIiIiIiMoezM9N6PlezNbIVp8xrvFyV3LToguzatWtZvXo1zz333HnvhUIhGhsb8fv9DA4O4vf76ezsBKBcLlMqlSgUCpTLZTweD5Zl4ff76erqcnsu+f1+RkZGyOVyNDY2EgwGOXXq1KyeTDPObu67e/du7r33XgYHB91fSHbu3Mn27dsZGxvD7/dX6ysRERERERFxnZ2ZFkKQrUZuqsnU4itVKpV46623WL9+/XnvzYTWjo4OTNOkoaHBDaFHjx7l+PHjnDlzhomJCVKpFIlEAsMw6OrqcqcQ+3w+stks4XCYrq4uKpUKuVyOJUuW4POd/8fP5XLu871797Jq1apZw/x33303qVSKQ4cOXf0vQ0RERERE5BwXy0y1Uo3ctKiC7ExT4Hg8Pmu7aZp0dnYSCATI5/Ok02kmJiYYHx+nUChg2zYADQ0NfPSjHwWmQ2tdXR39/f0kk0kKhQKlUolQKIRhGExOThIIBKivr8fr9dLZ2XnemtnNmze7z4eHh+dsVjzznoiIiIiISLVdKDPVUjVy06IKshfS0tKCx+OhUqkwPDzM6OgolmWdt5/jOG7l4kgkwr/5N/+Gf/fv/h1Lly7FMAwSiQTlcpl8Pg9AsVgkk8kwNjaGbdvucPiMXbt2cezYserfoIiIiIiIyCJVjdy0qILsTFPg0dFRd5tpmgQCATKZDCMjI0xOTl7w+GQySS6Xo7e3l/b2dv72b/+Wt99+m9HRUfx+P7Ztk8/nqVQqmKZJV1cXjuOQy+VIJBK0t7efNyp79OhRANrb2+dsVjzznoiIiIiISLXNlZkWgqudmxZVkJ1pCrxnzx53WzQaxev1Mjk5STKZvOjxsViMW2+9lb/4i7/gox/9KB0dHZRKJXdtrM/nw+Px4PF4MAyDWCyGx+OhoaEBwzAIBALuiO6Mjo4OANatW8eBAwdm/Yd55ZVXiEajrFix4ip+CyIiIiIiInObKzMtBFc7Ny2qIAvTTYF/+MMfuq/D4TC5XO68vkNnj5wGAgE++tGPsm7dOrxeL6ZpMjExQSAQIBQKEQ6HaWxsJBKJ8NGPfpS6ujqCwSCWZZHP5wkEAjiO47bomfGpT32KW265BYC77rqLFStW8OCDD/L222/zy1/+kieeeIItW7acF35FRERERESq5dzMVGvVyE2LLsjef//9fOtb33Jf+/3+C/aUnQmz5XKZ4eFhDhw4wK9+9SvOnDlDKpWitbUV27Y5ffo0kUiEcrnMiRMniEajRKNRBgYGmJycZGJiwn0/GAy6n//iiy+6z03TZNeuXZimybp163jggQfYtGkTTz31VJW+CRERERERkfOdm5lqrRq5adH1kQVIpVLEYjEAent7sW2b4eHhWYHWMAzOvTXDMKirq+Pf//t/z8TEBMFgkHw+T6FQYGpqimw2SzabpampiampKcrlMidPnsTn89HS0oJt2/j9fgYGBoDZfWRFREREREQWipnMtND6yF4ti25E9lw+n88NszAdVucKsTBdtTidTvPrX/+aYDDo9pM9efIkU1NTGIZBb28vsViM6667DtM0AahUKgSDQXw+H16v95ren4iIiIiIiMy26INspVKhVCrN2jZXiPX5fO4oLky331myZAnXXXcdiUSC06dPYxgGy5Yt48SJE5TLZcbGxtz90+m0u1ZWREREREREamfRDy8WCgVSqRSmaWJZ1gVD7F/8xV/g9Xr53e9+RygUYunSpUxMTDAxMcFnP/tZjhw5gmmaDA4O4vF4OHToEOl0GpgOxslkkpaWlvNCs4iIiIiIiFxbi35ENp/PE4vFWLZsGR7P+bfT2dnJf/yP/5HW1lZOnDhBU1MTN954I7ZtEwqF2Lt3L0ePHqWhoQGfz8fRo0c5evTorHLQhmGwdOlSyuUy2Wz2Wt6eiIiIiIhI9XnMWl/BvCz6IDszIuvxeIjH4+etYW1qauLtt99meHjYDb3XX389/f39vP/++/j9fgzDoFQqEQwGaWpqOi8Qx2IxGhsb3fOJiIiIiIh8WBhrVnH662vxXrf0wvsEAlTuvBXzIzcsiNC76INssVh0CzXV19fT1tZGfX09pmkSDocZHR3l5MmTlMtlisUiHo8Hj8dDJBJhYGCAhoYGzpw5w6FDh/jVr37lrpOdEY1GWbJkCZOTk+RyOQqFwqwetSIiIiIiIovZe/8+wk3/6r2L7mOYJpM3B3jvoRY8t9x0ja7swhb9GlmYLsQUjUapVCq0tbVx8803k8/nicfjbhXj4eFhbNsmlUrx3//7f6elpYXR0VH8fj+O49Da2kprayuGYbgjsKFQiFgsRjabJZfLkUgkMAyDYDBILper9W2LiIiIiIh8YDc99Q4Fw4M1deKC+9i5HO3/+z9j992IJ5HBvnaXN6dFHWR9vul+SPl8ntHRUSKRCGNjY0xOTuL1epmamsK2bSzLclvpjI+PMzQ0RLlcJhwOu9OSJycnCYfD2LZNIBCgsbERv9/P5OQklmW51ZE1GisiIiIiIh8mViJ5WfvZhQL8ej+VKl/P5VjUQdayLLd/bCaTIRQK4fF4CAaDTE1Nkc/nKZVKVCoVbNvGcRyi0SjBYJCRkRFgOgQbhoHH48GyLAKBAO3t7fh8PvL5PMFgkImJCbLZrFrviIiIiIiILACLOsj6fD48Hg/hcJhCocDY2Bg+nw/HcairqwOm+8x6PJ5Zgbe5uZloNMrk5CQ+n89dTxuLxQiHw+TzeTKZDI7jkE6nyeVy7pTiQCCAx+NhamqqlrcuIiIiIiLyJ2tRB9lisej+Gw6Hqaurw3Ecd+1rfX09PT09hEIhQqEQ0WgUx3Ho6emhVCoxOjpKqVQim82Sz+fJZrNMTEyQSqUoFArYto3H46G+vh6Px0O5XCaVSmlkVkREREREpIbmVbX46aefZs2aNdTX1xOPx9m4cSP9/f2z9lm/fr1bYGnm8eUvf3nWPqdOnWLDhg2Ew2Hi8TiPPvoolcqVz7S2bZtMJkMymcSyLCKRCACJRIKBgQHee+89Tp06xYEDBzh48CAvv/wyf/M3f8Pvfvc79u/fz8GDBzly5AgnTpxgdHSUSqVCIBCgrq6OSCRCuVwmmUySy+UUYkVERERE5IIWamb6sJnXiOyePXvYsmULa9asoVKp8Pjjj3PXXXdx+PBhNzwCbN68maeeesp9HQ6H3eeWZbFhwwba29t58803GRoaYtOmTfh8Pnbs2HFlN+H14vV6KZfLZDIZAAzDwOfzEYlEME3TXSsL4DgOhmFQKBQwTRO/308kEsG2bQzDwLIsMpkMhULBDa6maeL1eimVSgqzIiIiIiIyp4WamT5sDOcDpLKxsTHi8Th79uzhjjvuAKZ/Xejr6+PZZ5+d85jdu3dz7733Mjg4SFtbGwA7d+5k+/btjI2N4ff7L3neVCpFLBabtc3r9RIIBCiXywCUy+VZgXOmoNNM6J15z7Zt93HuLxwejwfTNPF4PBiGQalUctfaAiSTSaLR6CWvV0RERERE/jTVOjOt53N4Dd9Vu5/5qDhlXuPlquSmeU0tPlcyOV2muampadb2H/3oR7S0tLBy5Uoee+yxWT1X9+7dy6pVq9w/CMDdd99NKpXi0KFDV3wtlUqFbDbrhk2fz4ff7ycQCODz+TAMA9u2KRaLbl/YXC5HoVCgVCq5LXp8Ph+BQMAt6mRZFsVi0V0zKyIiIiIicrkWUmb6MLniYk+2bfPwww9z++23s3LlSnf75z//eXp7e+ns7GT//v1s376d/v5+fvrTnwIwPDw86w8CuK+Hh4fnPFexWHQLO8Ef/zNcyNkjqzMjsTNh1uv1utOKPR4Pfr/fbc1jWRblctkd1b0UTTEWEREREZELWQiZqUIZahRbKkznqmrkpisOslu2bOHgwYO88cYbs7Z/6Utfcp+vWrWKjo4O7rzzTo4dO8by5cuv6FxPP/003/zmN6/o2JmAalnWnO+f/ceer3Q6fd4UZxEREREREVgYmekNfn5Fn3c1VSM3XVGQ/epXv8quXbt4/fXX6e7uvui+a9euBeDo0aMsX76c9vZ2fvOb38zaZ2RkBID29vY5P+Oxxx5j27Zt7utEIkFvby+nTp265kEylUrR09PD4cOH6ezsvKbnFhERERGRxeFPOTNB9XPTvIKs4zhs3bqVn/3sZ7z22mssW7bsksfs27cPgI6ODgDWrVvHt7/9bUZHR4nH4wC88sorRKNRVqxYMednzKxZPVcsFqtZsaWuri48ng+0xFhERERERD5klJlmq1ZumleQ3bJlCy+88AIvv/wy9fX17vzsWCxGKBTi2LFjvPDCC9xzzz00Nzezf/9+HnnkEe644w5uueUWAO666y5WrFjBZz7zGZLJJOPj4ziOw3/4D/9hzi9eRERERERksbiamenBBx/k4x//OD/4wQ8YHR2lo6ODt99+m9tuu62Wt7ggzKv9jmEYc25//vnn+cIXvsDAwAAPPPAABw8eJJvN0tPTw3333ccTTzwx61eA733ve/zn//yf8Xq9RCIRenp6GBgYoL+/3/3F4WJmSknXov1NLc8tIiIiIiIL29XKTCdPnmTjxo3s27ePuro6/u2//beYpsnf/M3fXFZuqnVuqfb55z21+GJ6enrYs2fPJT/nr//6r/nKV77C9773PWC6mldPTw8/+MEP+PrXv37J4wOBAE8++WRNRnBreW4REREREVnYrlZm6u3txe/3s2XLllm5affu3ZeVm2qdW6p9/nmNyF4NpVKJcDjMSy+9xMaNG93tDz30EIlEgpdffvm8Y84tJW3bNpOTkzQ3N1/wF49qchyHdDpNZ2en1smKiIiIiMhVN9/ctNAyE1Q3N11x+50rNT4+jmVZc/ZFOnLkyJzHfJD2O9U0MDBwyQpkIiIiIiIi8zXf3LRQMxNUJzdd8yB7Jc4tJZ1MJlmyZEkNr2hafX19rS9BRERERETkgpnp09yDF19NrqlCmTf4eVVy0zUPsi0tLZim6fZBmjEyMnLBnkgXKiVda7UaohcRERERkQ+3+eamC2UmLz68Rm2CLH9YxFqN3HTNF3j6/X5uvfVWXn31VXebbdu8+uqrrFu37lpfjoiIiIiIyIKj3HRxNalUtG3bNp577jn+23/7b7zzzjv8p//0n8hms3zxi1+8rOO///3vz+t8hmHg9XoJh8OEQiGi0Sitra00NDRgmiamaeLxeOa9APnhhx+e9frUqVNs2LCBcDhMPB7n0UcfpVKpzOszRURERERE4IPlpvlmpmqqRm6qyRrZ+++/n7GxMb7xjW8wPDxMX18fv/jFL85byDyXF198kccff/yS+/l8Purq6vD7/Xi9XgzDIBgM4vF4qKurIxaLMTU1xeTkJI7j4Pf7KZVKGIZBNpsll8tRKBQuWj77qaeecp9blsWGDRtob2/nzTffZGhoiE2bNuHz+dixY8flfTEiIiIiIiJ/cKW56XIz07VSjdx0zdvvfFBr165l9erVPPfcc3O+b5omTU1N1NfXEwqFKJVKjI6O4vf7MQyDUChEKBQCpkdqi8UiqVSKSqWCz+cjGAy6gTebzTI2NjarjPXZzm7uu3v3bu69914GBwfd/1g7d+5k+/btjI2N4ff7q/BtiIiIiIiIzHZ2ZlrP52q2RrbilHmNl6uSmxZVE9RSqcRbb73F+vXr53w/Go3S0dFBXV0dZ86cYXx8HNu2aW5upr6+HtM0yWaznD59msHBQQYGBigUCnR3d9PS0kJdXR2O42AYhruo+rrrriMcDs95vlwu5z7fu3cvq1atmvXryN13300qleLQoUNX70sQERERERG5gEtlplqoRm5aVEF2ppdSPB4/771gMEhPTw8NDQ2kUilisRilUokzZ85w4sQJ3n//fYaGhshms2QyGfL5PDfccAPxeJxQKIRt2wSDQXw+H7Zt09HRgdfrJZ1O09bWNucvA5s3b3afDw8Pz9njaeY9ERERERGRartYZqqVauSmRRVkL8Tj8dDW1obP5yMcDmNZFuPj40xNTVEoFLBtG4COjg4++clPEgwGufXWW0kmkxw+fJiJiQkKhQKJRIJIJEKhUGBqagrDMNznXV1d55WN3rVrF8eOHavFLYuIiIiIiCwK1chNiyrIzvRSGh0dnbU9Go2Sy+UYHR3lxIkTJBIJN7yebXJykkgkwn333Uc+n+eTn/wk999/P/F43K1cXKlU3IpZuVzOHZUtl8vEYrHzPvPo0aMAtLe3z9njaeY9ERERERGRartQZqq1q52bFlWQnemltGfPHnebz+ejubkZwzCYnJy86B+sVCqRzWYJh8OcOnWK//E//gf79+8nn88TDocplUokEgksywKmpysbhkEgEGBqaorW1tbzRmU7OjoAWLduHQcOHJh1/ldeeYVoNMqKFSuu5tcgIiIiIiIyp7ky00JwtXPTogqyMN1L6Yc//KH7OhwO4/V6mZycvGB14RnLly/H5/ORSCT45Cc/ydKlSwHcNbOGYeA4Dh6Px2274/F4aGpqolQqzap4DPCpT32KW265BYC77rqLFStW8OCDD/L222/zy1/+kieeeIItW7YQCASu7pcgIiIiIiJyAedmplqrRm5adEH2/vvv51vf+pb7OhQKkUqlsCzrgj1fly9fzu23387y5csJhUJMTEwwMTFBOp2mrq6Onp4eGhsbiUajLF++nGAwSFtbGy0tLSSTSUzTJBAIkMvlZhV9evHFF93npmmya9cuTNNk3bp1PPDAA2zatGlWzyQREREREZFqOzcz1Vo1ctOi6yMLuFWJAZYsWUKpVGJkZGTOIGsYBnV1ddx5551MTk7y7rvv0tjYSGtrK01NTViWRbFYpKWlhb1797JkyRImJiZoa2tjeHiY/v5+gsEggUCAYDCI4zgMDg4Cs/vIioiIiIiILBQzmWmh9ZG9WhbdiOy5wuEw0Wj0vLWrMxzHIZ1Os2fPHo4cOcLU1BRtbW3EYjE8Hg+ZTIbf//73DA4O0traypkzZ9xwGw6HMU2TfD5PLBbDcRxNExYREREREamxRR9kA4EAXq93zirFZ5uammJ0dNQt6BQIBAiHw0xNTdHU1MR7772HYRg0NDTQ3NyMz+ejWCxSLBaxLItKpYLH45mzn6yIiIiIiIhcO4s+yCYSCbe68MU0NjbS0tKC4zgEg0FuueUWVq9ezYoVK8jlcgD88z//MwcOHKBcLtPe3j6reFQymcSyrEsGZhEREREREakub60v4IMql8uzKg6fKxQKsXz5cj7+8Y8DcPjwYbxeL/F4nOHhYerq6rjlllvIZrPU19djGAb19fW88sorjI+Pu5+TyWSIx+OXrIwsIiIiIiIi1bXog2w+n6enp4f29na3CNOMYDDIfffdR7FYZHx8nImJCaLRKLZt8/vf/x7TNPn7v/97brjhBmKxGKFQiHw+z+9+9zsSiYT7OYZhsGTJErxe76ztIiIiIiIii53Z2kr2k8sIH09hHzwy904eE7Mugp0v4JRL1/YC57Dog2wul2NycpLW1la8Xi+nT592p/9WKhV+/vOfk0gk6OnpoaWlheuuu44bb7yRgYEBpqamqKur48SJE4yOjlJfX89HPvIRWlpaZgXWcDiMz+fDsizy+XyN7lREREREROTq8vSt4P2/iFGuc2joaKTl4Nz7pf9Paxj7mIFZMLjuRyNY7x67thd6jkW/RrZUKlEoFDBNkxtvvJHe3l7C4TAej8ftMev3+91yz5VKhaamJlpbW5mamiIYDFIoFLAsi9OnT9Pf3+9WNIbpqckdHR14PB5yuRzFYtF9T0REREREZDE79a8baP/kEE5TmZb92Qvu1/hPQ/iTBuV6mzMb2uASNYqqbdGPyDqOw/j4uFtNuL6+nqamJvx+P21tbYyPj9PQ0MDQ0BDj4+O8/fbb/Pa3v6VYLBIKhVi5ciUTExNcd911VCoVyuUyHo+H5uZmTNOkoaGBcrlMOp0mm83iOA7hcJhMJlPjOxcREREREflgev/Xg+R/fxM3ThRwfneB4Vigcvwkvc/lyK1ZSqajtiEWFnmQ9Xq9eDweisUiqVSKbDZLS0sLg4ODBINBstksXq+XXC7H0aNHaW1tpVgsuu13yuUyJ0+exLZtkskkXq+XWCxGU1MT0WiUU6dOkUqlgOmR3HQ6DXDJCskiIiIiIiKLgZVK4f/Fbzm/bO4c+46NEfj5GIGqX9WlLeogC9NTiwHS6TSNjY0kEgm8Xi+lUonDhw8D08FzJogGg0ECgQCpVIpiscjAwAAApmliWRY+n4/m5mbq6+vJ5XKYpkk6nSaTyWBZFgCFQqE2NysiIiIiIiKLO8j6fD73US6XGR0dJRQKEY1Gqa+vx7ZtJicnZ/V+LZVKNDc3EwqFGB8fxzAMTNMkEAjQ2NhIMBikWCySyWTckdpCoYBhGEQiEUzTxDRNpqamanjnIiIiIiIif7oWdZCdqSBcLBYJh8PU19djWRbj4+OkUikaGhpYsmQJdXV11NfXEw6HKZVKXHfddZRKJcbGxnAch6mpKTKZDLlcjomJCdLpNOVymUqlgmmaRKNRvF4vhULBDbgiIiIiIiJSG/Mqv/v000+zZs0a6uvricfjbNy4kf7+/ln7rF+/HsMwZj2+/OUvz9rn1KlTbNiwgXA4TDwe59FHH6VSqVzxTdi2TSaTIZlMYts2kUgEx3GYnJzkzJkzvPvuu7zzzju89dZbHDx4kJdffpkXX3yRf/qnf2Lfvn0cPHiQ/v5+Tpw4wdjYmBtgY7GYG34nJyfJ5XIKsSIiIiIickELNTN92MxrRHbPnj1s2bKFNWvWUKlUePzxx7nrrrs4fPgwkUjE3W/z5s089dRT7utwOOw+tyyLDRs20N7ezptvvsnQ0BCbNm3C5/OxY8eOK7oJn8+Hx+OhXC6TzWbJZrN4PB5M0yQcDhMIBNwRVdu2cRwHn89HsVjEcRz8fj9+vx/TNHEch2KxSKFQIJVK4TjTy549Ho97jIiIiIiIyFwWamb6sDGcmaR2BcbGxojH4+zZs4c77rgDmP51oa+vj2effXbOY3bv3s29997L4OAgbW1tAOzcuZPt27czNjbmttG5mFQqRSwWm7XN6/Xi8/lwHAfHcSiXy7NGTw3DwOPxuJWOZ3rBOo6DZVlUKhW3mNPZx3i9XrdKcblc5uyvK5lMuv1pRUREREREzlXrzLSez+E1fFftfuaj4pR5jZerkpvmNbX4XMlkEoCmpqZZ23/0ox/R0tLCypUreeyxx8jlcu57e/fuZdWqVe4fBODuu+8mlUpx6NChOc8z017n7Me5KpUK+XyeYrGIbdv4/X7C4TDhcNgNo7ZtUywWyefz7shtLpdzjzFN0x2dnRnFtSyLUqlEqVTiA2R+ERERERH5E7SQMtOHyRUXe7Jtm4cffpjbb7+dlStXuts///nP09vbS2dnJ/v372f79u309/fz05/+FIDh4eFZfxDAfT08PDznuZ5++mm++c1vXtZ1zYzGlstl4PyRWK/Xi9/vJ51O4/F4CIVCVCoVd7TVsqzzRmYvdi4REREREZG5LITMVKHMZTWJrYIK05msGrnpioPsli1bOHjwIG+88cas7V/60pfc56tWraKjo4M777yTY8eOsXz58is612OPPca2bdvc18ePH6evr++yjr1UOP0ga17T6fR5U5xFRERERERgYWSmN/j5lV38VVSN3HRFQfarX/0qu3bt4vXXX6e7u/ui+65duxaAo0ePsnz5ctrb2/nNb34za5+RkREA2tvb5/yMQCBAIBBwX/f29gLTlbyudZBMpVL09PRw+PBhOjs7r+m5RURERERkcfhTzkxQ/dw0ryDrOA5bt27lZz/7Ga+99hrLli275DH79u0DoKOjA4B169bx7W9/m+985zvs3LmT4eFhOjo6iEQirFix4rKuY6ZQUywWq1mxpa6uLvc6RERERERE4OpmptHRUX7yk5/wzDPPcObMGTweD9ls9rKuYyFkJqhebppX1eKvfOUrvPDCC7z88svcdNNN7vZYLEYoFOLYsWO88MIL3HPPPTQ3N7N//34eeeQRuru72bNnDzBdSnrZsmWcPn2aJ598ko6ODr72ta8BcPLkSeLx+CWvY6YCVy2qBtfy3CIiIiIisrBdrczU19eHx+PhnXfeYevWrTz//PP09vZy4sQJ+vv7L5mbap1bqn3+eQXZmTY053r++ef5whe+wMDAAA888AAHDx4km83S09PDfffdxxNPPDHr4vv6+piammJsbIxIJMKmTZv48Y9/zNatW/n6179+yetQkBURERERkYXoamWmkydPsnr1ajKZDI2NjTz00EPs2LGDZcuWXVZuqnVuqfb55z21+GJ6enrcXxEupFQqcfDgQV566SU2btzobh8fH2fv3r2XdR2BQIAnn3xy1hzwa6WW5xYRERERkYXtamQmmJ5mnMlkzstNn/3sZy8rN9U6t1T7/FdctfhKjY+PY1nWnOWkjxw5MucxxWJxVnVh27bZtGkThULhA1UdvlKPPPIIY2NjdHZ2ap2siIiIiIhcdfPNTQstM0F1c9M1D7JXYj59ZK+lgYGBS1YgExERERERqbaFmpmgOrnpmgfZlpYWTNN0y0fPGBkZuWAp6XN7IiWTSZYsWVLV67wc9fX1tb4EERERERH5EJpvbrpQZvo09+DFV/XrnUuFMm/w86rkpms+L9bv93Prrbfy6quvutts2+bVV19l3bp1cx4TCASIRqPuoxZ9kOZyoYXcIiIiIiIiH8R8c9OFMpMXH16jRo8/BOhq5KaaTC3etm0bDz30EJ/4xCe47bbbePbZZ8lms3zxi1+sxeWIiIiIiIgsOMpNF1aTSkX3338/3/3ud/nGN75BX18f+/bt4xe/+MV5C5kv5Pvf//68zmcYBj6fz320trbS1NREPB4nEAhgGAZer3feC5AffvjhWa9PnTrFhg0bCIfDxONxHn30USqVyrw+U0REREREBD5YbppvZqqmauSmefWRXQhefPFFHnzwQcrl8kX38/v9BAIBwuEwpmlimiY+n49KpUJTUxP19fXkcjmSySS5XI5IJOJ+5tTUlFv162Jfz9mLlmeaFre3t/PMM88wNDTEpk2b2Lx5Mzt27Lh6X4CIiIiIiMhFnJ2Z1vM5vEaN1sg6ZV7j5arkpkUXZNeuXcvq1at57rnn5nzf7/fT0tJCJBLBNE3y+TxTU1MEg0EcxyEUChEKhbAsC5/PRz6fJ5PJ4DgOlmXR2tpKMBjEMAympqYYHx8nn8/Pea6zm/vu3r2be++9l8HBQfcXkp07d7J9+3bGxsbw+/3V+UJERERERETOcnZmWghBthq5aVE1QS2VSrz11lusX79+zvdDoRBtbW14vV4mJiYoFouYpklLSwuxWAyPx0M6nWZwcJCJiQmGh4cJBAJ0dHTQ2NhIQ0MDlUoFx3EoFos0NTVx3XXXXbDKVi6Xc5/v3buXVatWzRrmv/vuu0mlUhw6dOiqfg8iIiIiIiJzuVRmqoVq5KZFFWRnmgLH4/Hz3psJsR6Ph1QqRSgUIpVKcebMGU6cOMF7773H6Ogo4XCYTCZDpVKht7cXr9dLKBSiWCzS0NCAaZoUCgVKpRKZTAbDMGhqasLrPb8u1ubNm93nw8PDczYrnnlPRERERESk2i6WmWqlGrlpUQXZCzFNk8bGRjKZDJZl4fF4GB4edkdlbdsGoL29nU984hN85jOf4eabb+bUqVO8//775PN5isUiU1NTNDQ0kMvlKBQKeDweEokEk5OTtLe3n1c2eteuXRw7dqwWtywiIiIiIrIoVCM3LaogO9MUeHR0dNb2pqYmSqUS6XSaXC7H5OQklmWdd/zIyAhDQ0Pu6Op9993Hf/yP/5GbbroJv9+Px+Nxf8EwDINcLofjOBQKBYLBIA0NDed95tGjR4HpkDxXs+KZ90RERERERKrtQpmp1q52blpUQXamKfCePXvcbV6vl1gs5pZrnpqaOu+4mZHUpqYmOjo6CIVCHDx4kL/7u7/j17/+NUePHsXr9bojsTBdTauxsRHHcQgGg2QyGWKx2Hmjsh0dHQCsW7eOAwcOzPoP88orrxCNRlmxYsXV/SJERERERETmMFdmWgiudm46f+HnArdt2zY2bdrkvq6rqwNwpw/PVYT5s5/9LLlcjo9//OO0tbUxPDzMpz/9aaampnAch3w+j23bOI6D4zgYhuFOK/b5fDQ1NTE4OMjNN99MOBwmm80C8KlPfYpbbrkFgLvuuosVK1bw4IMP8ld/9VcMDw/zxBNPsGXLFgKBQLW/FhEREREREeD8zFRr1chNi2pEFqabAn/rW99yXweDQbLZLJZlUSqV5jzm5MmT9PT0MDIywrFjx3j//fdJJBLceOONdHR0sGzZMurr692GvF6vF6/XSyAQYHx8nEqlgt/vJ51OEwwG3c998cUX3eemabJr1y5M02TdunU88MADbNq0iaeeeqp6X4aIiIiIiMg5zs1MtVaN3LTo+sgCpFIpYrEYAJ2dncB0hauZUdlzxeNx1qxZQ0NDA3v37iWdTlMul7n77rtpbm4mmUwyPDzM8ePH6erqolgsuvucOHECn89HLBbDsiwCgQCnT58GZveRFRERERERWShmMtNC6yN7tSy6qcXnikajpNPpi+4zOjrKL3/5SwKBAKFQiKamJqLRKIZhUCwWGR0dJZFIEA6HSafTTE1N0dXVRaFQwOv1UiwWicfjDA4O4vPV5j+BiIiIiIiITFt0U4vP5fFM38KFRmNnVCoVstksiUQCmJ6nHY1GeeONN8hmsxSLRcLhMIZh0N3dTSKRwLZtLMvCtm2y2SyBQIByuVztWxIREREREZGLWPQjsuVymfr6+ovuYxgGvb29lEolhoeH6ejowO/3A7Bq1SpCoRC//e1v+ed//mf8fj+tra3k83kAtxpyJpPB4/G4x4mIiIiIiEhtfCiCbCAQwDCM8yoWNzQ0cP3113PDDTfg9XpJp9OkUimi0Sgf+9jHmJiYYGBggFwux7p162hpacFxHEKhEG+++Sa5XM79rGw2Szwev9a3JyIiIiIiUl2GgScUwilXcMpzF9BdaBZ9kC0UCjQ1NdHc3Mz4+Li73TRNOjs7KZfL/B//x/9BY2MjjY2N5PN5brjhBv7xH/+RUqnEW2+9xdKlS5mYmKCuro5CoUAymZwVYgFaW1sJBoNz9qkVERERERFZbLzLehn5806skEGhCSKDDi0//C3OH2alns28fhnl9hi+yRzO+6ewC4UaXPEfLfogm0wmicfjNDU1kUql3BY8lmVx+PBhd79CoYDP5+PGG29k7dq1ZDIZXnnlFXw+H7///e9Jp9N4PB6WLFlCW1sbpmliWRYwHYqLxaLb6kdERERERGSx69/SwXc/99c88tq/x8iZeHMXKKFkGAzd1UHqehvDDtJ0sJnG//4bsK1re8FnWfTFnvL5vDtK2tbWRjQadXvAer3TOd00Tdrb22lpaaGhoYHjx4/T39/P8PAwgUCApqYmAoEAtm1z5swZ8vm8e2wwGKS1tZWGhgby+by7dlZERERERGQxMyoGnwmO8rPPfo8H1/8DrftLc47G4jh0vDqKL+3B8cDUR8Db03ntL/gsi35EFmBsbIzOzk4aGxtpaWnB4/HQ2dnJ0NAQxWKRjo4OKpUKQ0NDTExM8Ktf/YqpqSluvfVWlixZwv79+7npppsoFot4PB4ikYgbiBsaGnAch0QiQalUwrZtAoEAxWKx1rctIiIiIiJyxW74zmHue/1rTHzUR/ytIr5fvXXBfa3+oyz/fxdIfLKLUr2Bk8pcwys936IOsj6fD9M0KZVKTE1NuY128/k8k5OTlEolLMsin89TLpeJxWJMTEyQy+UIBAKcOHGC999/n3Q6TSAQIB6PE4vF8Hg8dHV1kUwmSSaTbhueVCqFx+NxW/6IiIiIiIgsVlYiSeDnv6Xz55e3f2XgNHUDp6ePreJ1XY5FHWQdx6Hwh0XGuVyOhoYGyuUyhmFQLBYZGhoCcItAnTlzBp/PR319PYVCgcnJSbe9jmmaDA4O4vV6icfjhEIhisWiG5QTiYS7r4iIiIiIiNTOog6ypmni8/kIh8MUCgUmJibw+/1EIhEaGhro6OgglUpRqVQoFApui55AIIBpmhQKBfx+P4ZhEAwGaWlpwe/3UywWSafTWJZFoVAgm81iGAaRSASfz4fH42FycrLWty8iIiIiIvInaVEH2Zl1qsVikVAoRCwWo1KpkEgk3BHapUuXEgwG8Xg8eL1e/H4/N9xwA5VKheHhYYrFIplMhlwu5xaOSqVSFItFLMvCNE0aGxsxDINCoUAqlcK27RrfuYiIiIiIyJ+ueS32fPrpp1mzZg319fXE43E2btxIf3//rH3Wr1+PYRizHl/+8pdn7XPq1Ck2bNhAOBwmHo/z6KOPfqBpu7Ztk81mmZycpFwuU1dXh8fjIZFIcOLECd555x1OnjzJsWPHOHjwIP/zf/5PfvzjH/PrX/+aAwcOcOjQId59911OnDjB6OgopVIJv99PLBYjEom405BzuZxCrIiIiIiIXNBCzUwfNvMakd2zZw9btmxhzZo1VCoVHn/8ce666y4OHz5MJBJx99u8eTNPPfWU+zocDrvPLctiw4YNtLe38+abbzI0NMSmTZvw+Xzs2LHjim7CNE1M06RSqZDL5cjlcng8Hvx+P9Fo1C3OVCqVcByHcrmM1+t1+8T6/X5CoRCmaQK4bXYKhQKO4wC4I7ozfWpFRERERETOtVAz04eN4cwktSswNjZGPB5nz5493HHHHcD0rwt9fX08++yzcx6ze/du7r33XgYHB2lrawNg586dbN++nbGxMfx+/yXPm0qliMVis7bNhFmYLgJVqVQ4+9YMw3D3MU3T/eVjZl/LsrAs67xjZvrJwvR/qLNHZGeqJIuIiIiIiMyl1plpPZ/Da/iu2v3MR8Up8xovVyU3faA+MslkEoCmpqZZ23/0ox/R0tLCypUreeyxx8jlcu57e/fuZdWqVe4fBODuu+8mlUpx6NChOc9TLBZJpVKzHueyLItSqeSOuvp8Pvx+P4FAAJ/Ph2EYWJZFsVgkl8uRzWbJZDJks1l3PaxhGAQCASKRCIFAwB21LZfLlMtlTSsWEREREZF5WUiZ6cPkios92bbNww8/zO23387KlSvd7Z///Ofp7e2ls7OT/fv3s337dvr7+/npT38KwPDw8Kw/COC+Hh4envNcTz/9NN/85jcv+9rOnjtuGIY7LXhmNNbr9ZLNZjFNE7/fj+M4lEolt1/sTBi+lA8wmC0iIiIiIh9yCyEzVShDjWJLhTJQndx0xUF2y5YtHDx4kDfeeGPW9i996Uvu81WrVtHR0cGdd97JsWPHWL58+RWd67HHHmPbtm3u6+PHj9PX13dZxzqO404bPle5XHb70F6JdDp93hRnERERERERWBiZ6Q1+fmUXfxVVIzddUZD96le/yq5du3j99dfp7u6+6L5r164F4OjRoyxfvpz29nZ+85vfzNpnZGQEgPb29jk/IxAIEAgE3Ne9vb3AdCWvax0kU6kUPT09HD58mM7Ozmt6bhERERERWRz+lDMTVD83zSvIOo7D1q1b+dnPfsZrr73GsmXLLnnMvn37AOjo6ABg3bp1fPvb3+Y73/kOO3fuZHh4mI6ODiKRCCtWrLis65ipQhyLxWpWbKmrq8u9DhEREREREbi6mWl0dJSf/OQnPPPMM5w5cwaPx0M2m72s61gImQmql5vmVbX4K1/5Ci+88AIvv/wyN910k7s9FosRCoU4duwYL7zwAvfccw/Nzc3s37+fRx55hO7ubvbs2QNMF2VatmwZp0+f5sknn6Sjo4Ovfe1rAJw8eZJ4PH7J65ipwFWLqsG1PLeIiIiIiCxsVysz9fX14fF4eOedd9i6dSvPP/88vb29nDhxgv7+/kvmplrnlmqff15B1jCMObc///zzfOELX2BgYIAHHniAgwcPks1m6enp4b777uOJJ56YdfF9fX1MTU0xNjZGJBJh06ZN/PjHP2br1q18/etfv+R1KMiKiIiIiMhCdLUy08mTJ1m9ejWZTIbGxkYeeughduzYwbJlyy4rN9U6t1T7/POeWnwxPT097q8IF1IqlTh48CAvvfQSGzdudLePj4+zd+/eOY8pFosUi0X3dT6fZ+vWrR+oUNOVKhaLbN++nfHxcerq6jS9WEREREREXFcjM8H0NONMJnNebvrsZz87Z25aSJlp5nqqmZuuuGrxlRofH8eyrDnLSR85cmTOYy5USvq//tf/WpVrvBz/5b/8FwYGBi65cFtERERERGS+5pubFmJmgurlpmseZK/EuaWkk8kkS5YsqeEVTauvr6/1JYiIiIiIiFwwM32ae/Diq8k1VSjzBj+vSm665kG2paUF0zTd8tEzRkZGLruU9EJxofnvIiIiIiIiH8R8c9OFMpMXH16jNkGWP8yyrkZuuuYLPP1+P7feeiuvvvqqu822bV599VXWrVt3rS9HRERERERkwVFuuriaTC3etm0bDz30EJ/4xCe47bbbePbZZ8lms3zxi1+syvkMw8A0TXw+H7Zt09DQAEClUiGbzWIYBuVyGcuyLrk4W0RERERE5Fq41rlpMalJyd3777+f7373u3zjG9+gr6+Pffv28Ytf/OK8hcwX8v3vf/+S+5imSSwWo729na6uLjo6OliyZAnd3d0sXbqUG2+8kZ6eHpYtW8by5cvp6emhp6eH3t5empqa8Pv9lzzHww8/POv1qVOn2LBhA+FwmHg8zqOPPkqlUrmsexIRERERETnbB8lNl5OZrpVq5KZ59ZFdCF588UUefPBByuXynO8HAgEaGxuJRqMYhkGhUCCXy816PxKJYFkWPp8Py7JIJBI4joPf7ycajVJXV0ehUGBsbIzJyUlKpdKc5zq7+tZM0+L29naeeeYZhoaG2LRpE5s3b2bHjh1X/4sQERERERGZw9mZaT2fq9ka2YpT5jVerkpuWnRBdu3ataxevZrnnnvuvPdisRgNDQ1EIhGi0SgTExOUSiX8fj+GYZBIJLBt250+7Pf7WbZsGcPDw3g8HizLIpfL0djYSKVSIRAIUC6XOXHixJxh9uzmvrt37+bee+9lcHDQ/YVk586dbN++nbGxscsa4RUREREREfmgzs5MCyHIViM31WRq8ZUqlUq89dZbrF+//rz36uvricfjOI7D6OgoZ86cYXJykuHhYd5//33effddEokE7e3tBINBwuEwnZ2dpNNpWlpayGazRCIRAoGAO6ydyWRob2+nra0N0zTPO+fZI7179+5l1apVs4b57777blKpFIcOHbr6X4aIiIiIiMg5LpaZaqUauWlRBdmZpsDxeHzWdq/XSzweZ3R0lEwmg8fj4cyZM0xMTFAsFrEsC8MwiMVixONxVq9eTV1dHUNDQ4yNjVEqlahUKuTzeUzTJJ1Ok8/nAejv7yefz9PR0YHHM/vr2rx5s/t8eHh4zmbFM++JiIiIiIhU24UyUy1VIzctqiB7IS0tLeTzefL5vDsia9v2rH0cx8E0TUzT5NChQ3g8HtavX8+/+lf/ipaWFoLBIIZhuKOxtm1TLBbx+/2USiVCoZA7HD5j165dHDt27Jrdp4iIiIiIyGJTjdy0qILsTFPg0dFRd5vP5yMajZJKpYhEIiQSiVnHBAIBOjs7CQQCfOxjHyMYDDI2Nsbhw4f5h3/4B44ePcro6Cgej4dUKkWhUMC2bTweD+3t7RiGgdfrZWhoaM5R2aNHjwLQ3t4+Z7PimfdERERERESqba7MtBBc7dy0qILsTFPgPXv2uNvq6+upVCp4vV4qlcp5fWCDwSAPPfQQ99xzD5lMhv3797NixQpuv/12enp6SCQSZLNZKpUKfr8f0zTxeDzYts3w8DDlcpm6ujosywIgHA7P+vyOjg4A1q1bx4EDB2b9h3nllVeIRqOsWLGiWl+JiIiIiIiIa67MtBBc7dy06KoWv/jii2zatMmtItzR0YHjOOTzedLp9KwpxYZh4DgON954I0uWLGHp0qWMjIxw5swZ6urquP766ykUCgwMDLhzySuVirsYORgMMj4+TiQSoaGhgVQqRaVSYWxsDIBPfepT/OM//iPwxzLSnZ2d/NVf/RXDw8M8+OCD/C//y/+i9jsiIiIiInLNnJ2ZFkLV4mrkpkU1IgvTTYG/9a1vua/D4TDRaJR8Pj9niIXpfq+lUonm5maOHj3K/v37KZfLRKNRQqEQLS0tNDU1YVkWDQ0NNDQ04PP5CAaD2LZNKpXCtm3K5fKsEdkXX3zRfW6aJrt27cI0TdatW8cDDzzApk2beOqpp67BtyIiIiIiIjLt3MxUa9XITYtuRBYglUoRi8UAuPnmm0kkEpescBUKhfgX/+JfcOLECbLZLH/5l39JNptl79693HLLLUxNTXHo0CECgQDRaJRsNkssFmPfvn0UCgVuuOEGRkZGaG1tded3n90PSUREREREZKGYyUwLYUS2GrnJe1U/rQZ8Ph+GYVxyv3w+z29/+1s8Hg+NjY3kcjkmJyfx+XyUy2VSqRStra3kcjl31DWdTlMqldypy16v97xiTyIiIiIiInJtLfogWy6XMU3zgu+bpkkwGOTGG28kkUhw5swZli9fTmtrK9ddd51bJCoYDPL73/+eYDDI1NQU+Xwev9/vFnmaae1TKBRmTVsWERERERGRa2vRB1nTNIlGo+eFy5n2OZ/85CdJp9MEg0FuvvlmRkZGMAyDFStWMDU1RTabxefz0dXVxW233YbjODQ0NPDLX/6Sqakp9/Ns23ZHahViRURERERk0TMMzBuXY+QKlLub8Y6nsd57/6L7s0Cy0KIPshMTE8TjcRoaGmYFT8dxGBoa4u/+7u8oFouEw2FuueUWzpw5QygU4le/+hUTExMcOnSIYDBIMpmkubmZYDCIZVmUy2X3s2ba8USjUSYnJ2txmyIiIiIiIleV9ZmP8d5fTq+fNcoG/mSEZf+3caxUavaOHpPCPbeSWO4lNG7TcCSN89ahGlzxWZdU07NfBel0Gq/XS1dXl7t+dWbNrOM4FItFAAKBAJOTk8RiMcLhML/61a+YnJwkFApx/PhxTp8+zdtvv82BAwdIJBJ4vX/M+H6/H7/fT6lUmhVwRUREREREFiXD4P0vwkN3/AP/l7tewm4s4ymB/Yf8NGtX02TyI14yvTZjn4DjG6N429tqcNF/tOiDbC6XI5FIYFkWbW1tBINBPB6PW9UYwOv10t7eTktLC5FIhNbWVjo6OjBNk87OTpYsWYLf73c/L51O4/F4MAyDUChEOBymsbGRVCpFIpGo0Z2KiIiIiIhcPU7R5DN1R7g3cpr/15/9f2g5WMGZI8g65RLdfz+FN2+AA5WIQ+Gj3TW44j9a9FOLHcdhZGSEtrY2mpub6ezsJJlM0tPTw9jYGIVCgWg0SmdnJ4ODg2QyGX7/+9/T0tLCTTfdRHNzM0NDQ6xcuRLLskilUgSDQRoaGmhubiYajZLJZEin01QqFQCCwSCFQqHGdy4iIiIiInKFHIeP/J/7+dbHv0Cmy0/dmRLBPb+94O722+9wfXIJU5/sJNXrITCYwrqGl3uuRR1kZ9az5vN5N2gGg0G3VU4oFKJcLjMxMUEmk6FUKhGNRmlsbMQwDCKRCK+88gqZTIZ4PM7SpUvx+XwUCgXa2tpIJpNMTk5SKpWwLItcLofX671olWQREREREZHFwEqlMF/7Z2KX3HNa5cQp6k+cIhYMYtV4YG9RB9lyuYzjONi2TaFQIBQKkcvlMAyD/fv3Mzo6iuM4eDweHMfBMAzC4TA+n49SqcQrr7zirqE9c+YMp0+fxuv10tLSgtfrpVQqEQgE8Hq9JBIJd0TWtu1a3raIiIiIiEjN2AtgduqiDrKBQAC/34/H46FUKnHmzBnC4TDBYJCmpiZCoRCTk5MUi0VKpRK2bZPNZunu7sZxHDKZDH6/H8MwCAQCxONxAoEAhUKBdDqN4ziMjo5SLBYxDIP6+no3FKvok4iIiIiISG0s6iCby+XI5XJ4PB4ikQjNzc1UKhWSySS5XI7GxkaWLFlCMBh017X6fD4+8pGPUCgU3BHbZDJJoVAgl8sxNjZGJpOhUCi4o7mxWAy/308ulyObzWpEVkREREREpIbmVbX46aefZs2aNdTX1xOPx9m4cSP9/f2z9lm/fj2GYcx6fPnLX561z6lTp9iwYQPhcJh4PM6jjz7qTtu9ErZtk06nGRsbo1gsUl9fj2maJBIJTp06RX9/P++++y6nT5+mv7+fv/u7v+Nv//Zvefvttzl06JD7/okTJxgfH6dcLrsFn6LRKMVikfHxcYVYERERERG5qIWamT5s5jUiu2fPHrZs2cKaNWuoVCo8/vjj3HXXXRw+fJhIJOLut3nzZp566in3dTgcdp9blsWGDRtob2/nzTffZGhoiE2bNuHz+dixY8cV3YRpmng8HiqVCtlslmw2i2EY+P1+YrEYgUCASqWCbds4jkOhUHCnI5umic/nIxgMuv+JstkspVKJfD6P4zjuObxer7umVkRERERE5FwLNTN92BjOTFK7AmNjY8Tjcfbs2cMdd9wBTP+60NfXx7PPPjvnMbt37+bee+9lcHCQtrbpJro7d+5k+/btjI2Nuf1cLyaVSs3qEwtgGAY+nw+YbslTqVQ4+9YMw3DDqMfjcR+WZVEul7EsC8uaXUDa4/FgmqZbpXhmvxnJZJJoNHrJ6xURERERkT9Ntc5M6/kcXsN31e5nPipOmdd4uSq5aV5Ti8+VTCYBaGpqmrX9Rz/6ES0tLaxcuZLHHnuMXC7nvrd3715WrVrl/kEA7r77blKpFIcOHbria3Ech1Kp5BZ18vv9hEIhtyCUYRhudeNcLkcmkyGVSrmjr7Zt4/F48Pl8+P1+97iZYwqFwnlBV0RERERE5GIWUmb6MLniYk+2bfPwww9z++23s3LlSnf75z//eXp7e+ns7GT//v1s376d/v5+fvrTnwIwPDw86w8CuK+Hh4fnPFexWJw1pXfmP8OFnDu66vV68fv9mKaJ4ziEQiGSySSGYRAKhTAMg2Kx6B53uetgP8BgtoiIiIiIfMgthMxUoQw1ii0Vpju9VCM3XXGQ3bJlCwcPHuSNN96Ytf1LX/qS+3zVqlV0dHRw5513cuzYMZYvX35F53r66af55je/eaWXSqVSmbUw+uxfOz5IG510On3eFGcRERERERFYGJnpDX5+RZ93NVUjN11RkP3qV7/Krl27eP311+nu7r7ovmvXrgXg6NGjLF++nPb2dn7zm9/M2mdkZASA9vb2OT/jscceY9u2be7rRCJBb28vp06duuZBMpVK0dPTw+HDh+ns7Lym5xYRERERkcXhTzkzQfVz07yCrOM4bN26lZ/97Ge89tprLFu27JLH7Nu3D4COjg4A1q1bx7e//W1GR0eJx+MAvPLKK0SjUVasWDHnZwQCAQKBwHnbY7FYzYotdXV14fF8oCXGIiIiIiLyIaPMNFu1ctO8guyWLVt44YUXePnll6mvr3fnZ8diMUKhEMeOHeOFF17gnnvuobm5mf379/PII49wxx13cMsttwBw1113sWLFCj7zmc+QTCYZHx/HcRz+w3/4D3N+8SIiIiIiIovF1cxMDz74IB//+Mf5wQ9+wOjoKB0dHbz99tvcdttttbzFBWFe7XcMw5hz+/PPP88XvvAFBgYGeOCBBzh48CDZbJaenh7uu+8+nnjiiVm/Anzve9/jP//n/4zX6yUSidDT08PAwAD9/f3uLw4XM1NKuhbtb2p5bhERERERWdiuVmY6efIkGzduZN++fdTV1fFv/+2/xTRN/uZv/uayclOtc0u1zz/vqcUX09PTw549ey75OX/913/NV77yFb73ve8B09W8enp6+MEPfsDXv/71Sx4fCAR48sknazKCW8tzi4iIiIjIwna1MlNvby9+v58tW7bMyk27d+++rNxU69xS7fPPa0T2aiiVSoTDYV566SU2btzobn/ooYdIJBK8/PLL5x1zbilp27aZnJykubn5gr94VJPjOKTTaTo7O7VOVkRERERErrr55qaFlpmgurnpitvvXKnx8XEsy5qzL9KRI0fmPOaDtt+ploGBgUtWIBMREREREZmv+eamhZqZoDq56ZoH2StxbinpZDLJkiVLanhF0+rr62t9CSIiIiIiIhfMTJ/mHrz4anJNFcq8wc+rkpuueZBtaWnBNE23D9KMkZGRC/ZEulAp6Vqr1RC9iIiIiIh8uM03N10oM3nx4TVqE2T5wyLWauSma77A0+/3c+utt/Lqq6+622zb5tVXX2XdunXX+nJEREREREQWHOWmi6tJpaJt27bx3HPP8d/+23/jnXfe4T/9p/9ENpvli1/84mUd//3vf39e5zMMA9M0CYVC1NfX09zcTCwWo6WlBZ/Ph9frxTCMef9S8PDDD896ferUKTZs2EA4HCYej/Poo49SqVTm9ZkiIiIiIiLwwXLTfDNTNVUjN9Vkjez999/P2NgY3/jGNxgeHqavr49f/OIX5y1knsuLL77I448/fsn9TNMkGAwSiUTw+/04jkMoFCIYDLr9a/P5PJlMhmKxSC6Xw+v14jiOu92yrIue46mnnnKfW5bFhg0baG9v580332RoaIhNmzbh8/nYsWPHpb8UERERERGRs1xpbrrczHStVCM3XfP2Ox/U2rVrWb16Nc8999yc75umSVNTE62trdi2TaFQIJ/PY1kWHo8Hr9dLfX09tm1jmiaWZTE1NYXjOHi9XqLRKKFQCMuyGB4eJpFIXDDQnt3cd/fu3dx7770MDg66/7F27tzJ9u3bGRsbw+/3V+cLEREREREROcvZmWk9n6vZGtmKU+Y1Xq5KblpUTVBLpRJvvfUW69evn/P9aDRKd3c3ra2tVCoVCoUChUKBWCxGfX09hmHg9/sxDIN8Pk9DQwM+n49gMEhDQwNer5dkMsnExASlUomenh6WLFlywSpbuVzOfb53715WrVo169eRu+++m1QqxaFDh67q9yAiIiIiIjKXS2WmWqhGblpUQXaml1I8Hj/vvcbGRjo6OojFYqTTabLZLJOTk0xOTnL06FGOHz/O5OQkDQ0NtLW10dzcTLlcxjRNWltbKRQKRKNRvF4vwWAQgEqlwk033URnZ+ecvwxs3rzZfT48PDxnj6eZ90RERERERKrtYpmpVqqRmxZVkL0Qn89HY2Mjw8PDDA8Pk8vlGBoaIpVKUSqVsG0bgNbWVkzTZHh4mHQ6jWVZmKZJKpVy9wkGgxSLRYrFIul0mmPHjpHL5YjH4+cVg9q1axfHjh275vcrIiIiIiKyWFQjNy2qIDvTS2l0dHTW9sbGRhzHwTAMHMdhYmLCDaYzTNPk+uuvJ5vNuiOxXV1drFq1ivr6enw+H4VCgVwuR6VSwbIsKpUKXq+XbDaLaZpEIpHzruno0aMAtLe3z9njaeY9ERERERGRartQZqq1q52bFlWQnemltGfPHnebz+ejoaGByclJfD4fExMTs46ZqVC8Zs0aDMOgUChw6tQpTpw4wcGDBxkYGCCZTGLbNvl83i0C5fP58Pv9FAoFvF4vU1NTdHZ24vHM/so6OjoAWLduHQcOHJj1H+aVV14hGo2yYsWKKn4rIiIiIiIi0+bKTAvB1c5NiyrIwnQvpR/+8Ifu60gkgmVZOI5DpVI5byTWMAxuvPFG2tramJycJJlM0tXVxZo1a+js7OTkyZMUi0W8Xi+dnZ3U19fjOI47OlsulwmFQmSzWSzLmjUq+6lPfYpbbrkFgLvuuosVK1bw4IMP8vbbb/PLX/6SJ554gi1bthAIBK7JdyMiIiIiInJuZqq1auSmRRdk77//fr71rW+5ryORCKVSiWAwSDabPW//SqVCsVjEtm1KpRJ+v59SqURzczO33XYbq1evpqGhgVWrVvGXf/mX7q8Atm3j9/vdacb19fXkcrlZFYxffPFF97lpmuzatQvTNFm3bh0PPPAAmzZtmtUzSUREREREpNrOzUy1Vo3ctOj6yAKkUilisRgAy5cvx+v1usWd5uLxePj4xz/On/3Zn/H3f//3HD58mHg8zs0330w4HCYUClEoFNw1sadPn2ZiYgK/3+9W/brxxhsZGBggGo1y/PhxYHYfWRERERERkYViJjMttD6yV8uiG5E9m2EY1NXVkUgkSKfTF9zPtm0OHTrE4OAgra2tNDU18ed//uekUilOnz6NYRgkk0mGhoYYGBigvb2d+vp6YrEYgUCAfD5PIpHAsqxreHciIiIiIiIyl0UfZE3TpFKpcKmBZdu2OXLkCPv27SMajdLc3Ex7ezudnZ0kk0m6u7uJRqNYlkU2m6Wrq4tMJsPk5CSO45DNZt3KyCIiIiIiIlI73lpfwAcxU2n4QkzTpKWlhYaGBuLxOAMDA2QyGVpaWgiHw3R1dZFOp5mamsLv95NOpwkGgzQ3N/NP//RPTE5OusWjTNPENE1s28bj8ZxXVEpERERERGTRMQxYfKtNF3eQhekw29PTQyqVolwuu9t9vul54DfffDOTk5Pk83k+9alP8fvf/55wOMyqVasYHR3l8OHDFAoFHMfhYx/7GIODgxSLRRKJhPt5hmFg2zZ1dXVUKpWa3KeIiIiIiMjV5F3Wy8ifd1I3XOHMHV4ipw3a/td/Avv8JZWG14unIYadzuCUSjUPv4s+yGazWRoaGmhoaGBsbAyYDp4zIfT111/HcRy8Xi/BYJBCocCSJUvYvXs34+PjnD59msnJSVKpFOFwmEgkQl1dHV6vl2KxCEAoFKJUKtHT08Pg4KBGY0VEREREZFEzG2Kc+PddWH1p/p9rfsCe7M34DIu/3/0xrKPHZ+3rCQYZ+cLHyCwBX9qg7oxD44v/jPOHvFQLi3qNLExX47Isi6amJjye6dtpbGx017IGAgEMw6CpqQnDMMjlclx//fX8+Z//OQCO45BOp8nlciQSCU6dOkUul3NHdGF6WnEgECCZTGpEVkREREREFj1naRf5mwv8xQ1v8/8Y+pf8sP+T/N9//Vmc00Pn72vZVMIGVtChELeZuMXB+dhNNbjqP1r0QTadTpPJZPD5fHR2dlJfX8/SpUtpb2/HMAwKhQKBQIBly5ZRLBYJhUJMTU1x+PBhTpw4gd/v57rrriMYDLpFo2amKXu9Xrc9T1NTE/l8fs5etSIiIiIiIouJMTDMss5xHm7Zy84lv+D/uvol2v5/XuxC4bx9nXKJrr+fxJs1wAHHA1M3R2pw1X+06PvIAtTX1xOPxzFNk3A4TLFYxOfzYVkWPp/PfT4TaoeHh91eRtdddx2GYRAKhRgeHqZUKhGPxzl+/Dj19fXk83l3FDafz5NMJvF4PJTLZfWRFRERERGRBely+siaLc1kP7mcfLNJ06E0zluHLrr21dvdRfoTXZQiHpr2TWEd6r/oNVSzj+yiXiPr9/vd6cLpdJpQKIRhGOTzeVpaWkilUoRCIU6dOoVlWQSDQW644QY8Hg91dXV0dnZy9OhREokEy5Ytw+PxuNOTly5dytjYGKVSyQ3E+Xwer9c7aw2uiIiIiIjIYmSNTxDcNUEQuJzRzcrpM4ROnyEEnF8O6tpa1EH27P6xqVQKn89HOp3G6/XS399PLpdz3zcMg3Q6TSKRIBKJkM/n2bdvn1u46d133wWm19Sm02kMw6BUKuHz+QgEAgwODlIqlYDpNbMiIiIiIiJSG4s6yIZCIXfasG3bDA8PEwgEaGhooKurC8uyGB8fp1AoUC6XsW2bcrmMaZpEo1EmJyfdEdZAIEA8HicQCFAsFkmlUjiOw+joKOVyGcMwCIfD+Hw+PB4PU1NTtb59ERERERGRP0mLOsjOFF7yeDyEw2FisRjlcpnJyUnS6TSNjY1uASiYrlBsmiY333wz+Xye0dFRt2pxqVQik8mQSqVIJpNks1ksy8I0TWKxGD6fz53CrPY7IiIiIiIitTOvqsVPP/00a9ascYsrbdy4kf7+2Qt8169fj2EYsx5f/vKXZ+1z6tQpNmzYQDgcJh6P8+ijj36gtja2bZPJZJiamqJcLlNXV4dhGExNTXH69GkOHTrEe++9x+nTpzly5Ai/+tWv+J//839y4MABDh06xOHDh+nv7+fkyZMMDg6Sz+fx+XzU19cTiUQoFotMTEyQy+UUYkVERERE5IIWamb6sJnXiOyePXvYsmULa9asoVKp8Pjjj3PXXXdx+PBhIpE/ll/evHkzTz31lPs6HA67zy3LYsOGDbS3t/Pmm28yNDTEpk2b8Pl87Nix44puwjAMTNN0KxMXCgUMw8Dn8xEKhairq3OnFQNMTU3h8XjcfrF+vx+/349pmpTLZYrFIoVCgWKx6K6x9Xg8eL3eWetyRUREREREzrZQM9OHzQdqvzM2NkY8HmfPnj3ccccdwPSvC319fTz77LNzHrN7927uvfdeBgcHaWtrA2Dnzp1s376dsbEx/H7/Jc97bvsd+GPQdBwHx3GwLGtW4DQMw93n7OrEtm27a2zPPWZmP6/Xi23bVCqVWSOyar8jIiIiIiIXU+vMdLH2O9VWzfY785pafK5kMglAU1PTrO0/+tGPaGlpYeXKlTz22GPkcjn3vb1797Jq1Sr3DwJw9913k0qlOHTo0JznmSm+dPbjXLZtUyqV3KJOM9WGg8GgW6DJtm2KxSL5fJ5sNks2myWfz7stdjweD4FAgEAgQCgUcgNsoVCgVCppWrGIiIiIiMzLQspMHyZXXOzJtm0efvhhbr/9dlauXOlu//znP09vby+dnZ3s37+f7du309/fz09/+lMAhoeHZ/1BAPf18PDwnOd6+umn+eY3vzmva5tplWMYBl6v130YhkEwGCSVSrmViGemCxeLRSqVCpZ1eV2RNMVYREREREQuZCFkpgrly2sSWwUVppd2ViM3XXGQ3bJlCwcPHuSNN96Ytf1LX/qS+3zVqlV0dHRw5513cuzYMZYvX35F53rsscfYtm2b+/r48eP09fVd1rGO47hrY4vFIgCZTMZ9f2bblUin0+dNcRYREREREYGFkZne4OdXdvFXUTVy0xUF2a9+9avs2rWL119/ne7u7ovuu3btWgCOHj3K8uXLaW9v5ze/+c2sfUZGRgBob2+f8zNmpvvO6O3tBaYreV3rIJlKpejp6eHw4cN0dnZe03OLiIiIiMji8KecmaD6uWleQdZxHLZu3crPfvYzXnvtNZYtW3bJY/bt2wdAR0cHAOvWrePb3/423/nOd9i5cyfDw8N0dHQQiURYsWLFZV3HTKGmWCxWs2JLXV1d7nWIiIiIiIjA1c1Mo6Oj/OQnP+GZZ57hzJkzeDwestnsZV3HQshMUL3cNK+qxV/5yld44YUXePnll7npppvc7bFYjFAoxLFjx3jhhRe45557aG5uZv/+/TzyyCN0d3ezZ88eYLqU9LJlyzh9+jRPPvkkHR0dfO1rXwPg5MmTxOPxS17HTAWuWlQNruW5RURERERkYbtamamvrw+Px8M777zD1q1bef755+nt7eXEiRP09/dfMjfVOrdU+/zzCrKGYcy5/fnnn+cLX/gCAwMDPPDAAxw8eJBsNktPTw/33XcfTzzxxKyL7+vrY2pqirGxMSKRCJs2beLHP/4xW7du5etf//olr0NBVkREREREFqKrlZlOnjzJ6tWryWQyNDY28tBDD7Fjxw6WLVt2Wbmp1rml2uef99Tii+np6XF/RbiQUqnEwYMHeemll9i4caO7fXx8nL17917WdQQCAZ588slZc8CvlVqeW0REREREFrarkZlgeppxJpM5Lzd99rOfvazcVOvcUu3zX3HV4is1Pj6OZVlzlpM+cuTInMcUi8VZ1YVt22bTpk0UCoUPVHX4Sj3yyCOMjY3R2dmpdbIiIiIiInLVzTc3LbTMBNXNTdc8yF6J+faRvVYGBgYuWYFMRERERESk2hZqZoLq5KZrHmRbWlowTdMtHz1jZGTkgqWkz+2JlEwmWbJkSVWv83LU19fX+hJERERERORDaL656UKZ6dPcgxdf1a93LhXKvMHPq5Kbrvm8WL/fz6233sqrr77qbrNtm1dffZV169bNeUwgECAajbqPWvRBmsuFFnKLiIiIiIh8EPPNTRfKTF58eI0aPf4QoKuRm2oytXjbtm089NBDfOITn+C2227j2WefJZvN8sUvfrEWlyMiIiIiIrLgKDddWE0qFd1///1897vf5Rvf+AZ9fX3s27ePX/ziF+ctZL6Q73//+/M6n2EYmKaJz+cjGAzS0NBAY2MjDQ0N+Hw+vF7vFS0+fvjhh2e9PnXqFBs2bCAcDhOPx3n00UepVCrz/lwREREREZEPkpvmm5mqqRq5aV59ZBeCF198kQcffJByuXzR/UzTJBwOEwwG8Xq9hEIhLMsiGAwSDoepq6sjk8mQTqcpFos4jkOlUqFcLlMul8lms1iWddFznL1oeaZpcXt7O8888wxDQ0Ns2rSJzZs3s2PHjqt2/yIiIiIiIhdzdmZaz+fwGjVaI+uUeY2Xq5KbFl2QXbt2LatXr+a5556b833DMKivr6etrQ2/3082m6VQKGAYBrZtEwgEqKuro1Kp4DgOpVKJXC6Hz+fDsix8Ph+xWIxSqcTY2BipVArbtuc819nNfXfv3s29997L4OCg+wvJzp072b59O2NjY/j9/up8ISIiIiIiImc5OzMthCBbjdy0qJqglkol3nrrLdavXz/n+5FIhJ6eHpYuXUooFKJYLJLL5aivryccDuP3+7nxxhv52Mc+xurVq2lubnbDbSgUwnEc0uk0g4ODpFIpOjo6WLJkCcFgcM7z5XI59/nevXtZtWrVrGH+u+++m1QqxaFDh67q9yAiIiIiIjKXS2WmWqhGblpUQXamKXA8Hj/vvfr6enp6erjppptIp9MkEgnGxsZIJBIcPXqUY8eOudtGR0c5efIkExMT7jrZbDZLIBAgEonQ2tpKJBLB6/WyYsUKurq65vxlYPPmze7z4eHhOZsVz7wnIiIiIiJSbRfLTLVSjdy0qILshfj9fpqamsjlcrzzzjuMjIxw+vRpkskkpVKJmdnTXV1dFAoFTpw4QSqV4iMf+Qh1dXWUSiV3Ta3jOKRSKRzHwbIsLMsik8nQ2Nh43nl37drFsWPHrvXtioiIiIiILBrVyE2LKsjONAUeHR2dtT0SiVCpVEgkEhiGQS6XO29d69KlS6mvr8dxHEKhEOFwmFwuR29vL16vF5/P5wZex3HI5/OkUimGh4cplUpugahzHT16FID29vY5mxXPvCciIiIiIlJtF8pMtXa1c9OiCrIzTYH37NnjbjNNk1gsRjKZJBKJMDg4OOuYQCBAd3c3S5cuJZlMkkgkOHz4MCdPnuTEiRO8/fbbbnXiYrFIKBQiFArh8Xgol8uMj49TV1fHyMgIra2t57Xp6ejoAGDdunUcOHBg1n+YV155hWg0yooVK6r1lYiIiIiIiLjmykwLwdXOTd6rfoVVtm3bNjZt2uS+DofDeL1eTNOkUqnM2TLH6/UyNTUFTJd7bm9vZ+nSpeRyOUZHRwkEAnz605+mWCxSV1fH3r17KRQK2LaNYRg4jkOxWMTj8RAOh8lkMgB86lOf4pZbbgHgrrvuYsWKFTz44IP81V/9FcPDwzzxxBNs2bKFQCBwDb4ZERERERGR8zNTrVUjNy2qEVmYbgr8rW99y33d0NBAsVgkEAiQTqfP279YLJJOp7Esi5GREXf964033si//tf/muuuu45YLMbRo0f5m7/5G/7xH/8Rx3HweDz4/X78fj+O4xAMBslms8RiMfezX3zxRfe5aZrs2rUL0zRZt24dDzzwAJs2beKpp56q7hciIiIiIiJylnMzU61VIzctuj6yAKlUyg2U119/PblcjmQySTabnbWfx+PBtm28Xi9/9md/xujoKP39/ViWRSQSYdmyZXR2dlIul0mn0zQ1NdHS0kJ/fz/Dw8P4fD7Gx8cpl8t0dHSQSqVoaGhwFyqf3Q9JRERERERkoZjJTAutj+zVsuhGZM9mGAaRSATHcSiXy+e9P1PwqVKpcOjQIT7zmc/Q2NhIJBLhz/7szwiFQmSzWTKZDK2trXz0ox8ll8sRCASoq6vD6/ViGAbFYpFyucwizPwiIiIiIiIfOotujezZPB4PlUqFcrlMqVS64H6GYdDc3Mw///M/Y9s2zc3NtLS00NXVxZEjR0gkElQqFXK5HOPj4/j9fnp7ezly5AjpdNqtYuw4Dj6fD5/PN2dwFhERERERkepb1EHWsiwqlQqVSuW89wzDoL6+nhtuuIF4PE5DQwP/8A//4BZqMk2TSCTCkiVLaGhooKmpie7ubg4cOMDw8DDvv/8+Z86ccUdhQ6GQ25P23MrFIiIiIiIii45h4G2LY41P4MyRqRayRR1kYXr68A033MDBgwfJ5/MABINBQqEQ6XSaYrHIwMAAg4OD3HPPPZTLZY4ePUpfXx/j4+OMj48TCAQYHBwkkUgQDAbJ5/OcPHnSDcgza23D4TCFQmHO4CwiIiIiIrJYGD4/6fs+ztjHDAKTy6mEIDgJbf/b73DK5892NRsbsW7qwZzMwvAYVipVg6v+o0UfZPP5PO3t7UQiETfImqZJIpHAcRwOHTrkbguFQhw/fpz169dz+PBhzpw5w/Hjxzl9+jSZTAa/34/P56O7uxu/3+9OVw4EApRKJRobG5mampqzxY+IiIiIiMhiUfn0SkZug8CyFH+35n/jQKmFiFHir37xOayjx2ft66mv5+SXP0KxxcZTjuDNtrHsvw9QOTlQo6tf5MWeADKZDMViEZ/Ph9frxev1cvPNN89qoePxeIhGoxiGQU9PD6tXr+b666+nUCgQCATweDwEg0Guv/56MpkMyWSScDgMTI/GhkIhtzDUxdbiioiIiIiILAbFBh92wMGyPHiAtYEJ/r+Tt+GMjJ+3r5PP482BY/zh2EabqU92XdsLPseiD7LpdJpMJkMwGKS1tZV4PM7KlStpamoCoFwuU1dXxy233MLExAQDAwP80z/9E++//z4nT54knU7T3d2Nbdu8//77wHQ49ng8eL1e2tvb6enpIRaLUSqVzmvxIyIiIiIisthE3x4hNGRSPh3hf5+6jV3ZZRz89i3Y6fR5+zqVCl2vjOPNGdi+6RpC6R4Phrd2E3wXfR9ZgGg0SnNzMx6Ph7q6OjKZDLFYDMMw8Hq9hEIhxsfHmZycpFQqkc/nsSyLUCiEz+fjuuuuw+PxkM1m8fl8VCoV6uvree+99/D5fO66WcuyGB0dxev1UiwW1UdWREREREQWpMvpI+sJhzE627Ab6zBHE5ecKuzt7SF/Uxu21yA4lMP5/aGL7l/NPrKLeo2s3+/HMAyy2axb4KlQKGCaJpZlUSqVsCyLZDLJu+++SzQa5YYbbmBoaMgt3pROp3n77bdpaGigubmZQqHgrretq6sjn89TLBZxHIdMJoNpmm6QFRERERERWazsXA7+sB72csrZVk4O4PtD2K31aOiiDrKO41Aul3Ech0QigcfjoVgsEolEGBoaYnR0FPhj1eFEIsG+ffswTRO/38/o6KhbgbhcLjM8PEwwGGTp0qUUi0W3AJTf7+fMmTNuMSkVexIREREREamdRR1kZwo8zVQVnpiYIBwOYxgG0WiUQCBApVJhcnKScrmMbdtUKhWamprw+/3k83lM08Tn8xEKhWhubiYQCFAsFkmlUliWRSKRcMNyKBTC6/W6VZFFRERERETk2lvUQTaXywFQLBYJBoPU1dVRqVSYmpoin88TCoVoampi6dKlbhj1+/1cd9112LbN0NAQ5XLZ7Q2by+WYmJigVCqRTqepVCqYpkldXR0ej8ct9mTbdo3vXERERERE5E/XvKoWP/3006xZs4b6+nri8TgbN26kv79/1j7r16/HMIxZjy9/+cuz9jl16hQbNmwgHA4Tj8d59NFH3Sm+V8K2bXK5HIlEAsuyqK+vxzRNUqkUJ0+e5O233+b48eMMDw9z6NAh/v7v/56//du/Zf/+/Rw9epTDhw9z+PBh3n//fcbGxkin026Arauro1wuk0wmyefzCrEiIiIiInJBCzUzfdjMa0R2z549bNmyhTVr1lCpVHj88ce56667OHz4MJFIxN1v8+bNPPXUU+7rmZ6sML2+dMOGDbS3t/Pmm28yNDTEpk2b8Pl87Nix48puwuvFMAx3VDWXy2EYBj6fj0gkgtfrxXEcCoWCu47WMAy3EvHM1OKZtbQzo7SlUskNrh6Px512rDArIiIiIiJzWaiZ6cPmA7XfGRsbIx6Ps2fPHu644w5g+teFvr4+nn322TmP2b17N/feey+Dg4O0tbUBsHPnTrZv387Y2Bh+v/+S5z23/Q5MB82Z3q8zYfTsWzMMw604PLM/TBeMsiwL27axLGvWMWd/pmVZlMvlWedU+x0REREREbmYWmemi7XfqbZqtt+Z19TicyWTSQCamppmbf/Rj35ES0sLK1eu5LHHHnPXsgLs3buXVatWuX8QgLvvvptUKsWhQ3P3IZopvnT241wzhZwKhQK2bePz+WhoaCASieDz+TAMA9u2KRQKFAoFd+Q2n8+7haBM0yQQCOD3+wkGg/h8PveYc0OsiIiIiIjIpSykzPRhcsXFnmzb5uGHH+b2229n5cqV7vbPf/7z9Pb20tnZyf79+9m+fTv9/f389Kc/BWB4eHjWHwRwXw8PD895rqeffppvfvObl31tM3PHS6USHo/Hbbfj803/EhEOh5mamsLj8VBfX0+5XMayLHfU9XJD6wcYzBYRERERkQ+5hZCZKpRr1vS1wnSuqkZuuuIgu2XLFg4ePMgbb7wxa/uXvvQl9/mqVavo6Ojgzjvv5NixYyxfvvyKzvXYY4+xbds29/Xx48fp6+u7rGNt25617hUgnU67789suxLpdPq8Kc4iIiIiIiKwMDLTG/z8yi7+KqpGbrqiIPvVr36VXbt28frrr9Pd3X3RfdeuXQvA0aNHWb58Oe3t7fzmN7+Ztc/IyAgA7e3tc35GIBAgEAi4r3t7e4HpSl7XOkimUil6eno4fPgwnZ2d1/TcIiIiIiKyOPwpZyaofm6aV5B1HIetW7fys5/9jNdee41ly5Zd8ph9+/YB0NHRAcC6dev49rf//+z9a5Bd5Z3veX7XWvt+yZ035U15USKEQCUhlbEsC1yUpvFBUYjowt1nhm4KhH0m5HZZ1jHQQ8swjD2mbeEK3DFElCOOjpkwPlMDbdoUPvSojDkMcxBHoCrK2EJIQomUSMpU3u87932vy7xIcpVSSl1RKjPh94nIYO+119rr2Vu8+e3nef7/H/OTn/yE3bt309/fT2NjI/F4nFWrVl3SOKYLNaVSqXkrtrR06VJ/HCIiIiIiInB1M9Pg4CC//vWvefrpp+np6cE0TbLZ7CWNYyFkJpi73HRZVYu//e1v88ILL/DKK6+wcuVK/3gqlSIajdLZ2ckLL7zAXXfdRU1NDQcPHuThhx+mubmZvXv3AlOlpNvb2zl9+jQ/+MEPaGxs5Lvf/S4Ap06doq6u7qLjmK7ANR9Vg+fz3iIiIiIisrBdrcy0bt06TNPkww8/ZMeOHTz33HO0tbVx8uRJOjo6Lpqb5ju3zPX9LyvIGoYx6/HnnnuOr3/963R3d3P//fdz6NAhstksLS0tfO1rX+OJJ56YMfh169YxNjbG0NAQ8XicrVu38qtf/YodO3bwve9976LjUJAVEREREZGF6GplplOnTrF27VoymQxVVVU8+OCD7Nq1i/b29kvKTfOdW+b6/pe9tPhCWlpa/F8RzqdUKnHo0CFeeukl7rnnHv/48PAw+/fvn/WaYrFIsVj0n+fzeXbs2PGpCjVdqWKxyM6dOxkeHiaRSGh5sYiIiIiI+K5GZoKpZcaZTOac3PTVr3511ty0kDLT9HjmMjddcdXiKzU8PIzjOLOWkz569Ois15yvlPTf/u3fzskYL8Xf/M3f0N3dfdGN2yIiIiIiIpfrcnPTQsxMMHe56ZoH2StxdinpiYkJWltb53FEU5LJ5HwPQURERERE5LyZ6SvcRYDgvIzJpsw+fjsnuemaB9na2losy/LLR08bGBi45FLSC8X51r+LiIiIiIh8Gpebm86XmQIECRjzE2T5ZJX1XOSma77BMxQKccstt/DGG2/4x1zX5Y033mDjxo3XejgiIiIiIiILjnLThc3L0uJHHnmEBx98kC9+8Yt86Utf4plnniGbzfKNb3xjzu5pmiaWZQFTpa9N08RxHCYmJnBdF8/zLroxW0RERERE5FqZj9y0WMxLyd17772Xn/70p3z/+99n3bp1HDhwgN/97nfnbGQ+n5///OcXPccwDMLhMHV1ddTX1/t/TU1NLFu2jJUrV9La2kpbWxsNDQ00NzfT2NhITU0NsVjMD70X8tBDD8143tXVxZYtW4jFYtTV1fHoo49i2/YlfSYREREREZEzfZrcdCmZ6VqZi9x0WX1kF4IXX3yRBx54gHK5POvrpmlSUVFBZWUlsViMbDZLoVDAcRxM0yQWixGLxSiXyxiGged5ZLNZf1Y2Go0SjUYpFouMjo6STqdxXXfWe51ZfWu6aXFDQwNPP/00fX19bN26lW3btrFr1645+z5ERERERETOdGZm2sRfztseWdsr8yavzEluWnRBdsOGDaxdu5Znn332nNeqqqqoqKggHo9TLpcplUoUCgUqKyvJ5/NUVlbieR6O41AqlSiVSv7G40AgQKFQIJPJEAgEiEQiVFZWkslk6Ovro1QqnXO/M5v7vvrqq9x999309vb6v5Ds3r2bnTt3MjQ0RCgUmsNvRUREREREZMqZmWkhBNm5yE3zsrT4SpVKJd577z02bdp0zms1NTU0NTWxcuVKAGzbJp1OMz4+zrFjx+jq6mJsbAzXdSmXy7iuSywWI5VKEQwGKZfLRKNR4vE4yWSSRCJBe3s7X/7yl1m6dCmBwLnbiXO5nP94//79rFmzZsY0/+bNm0mn0xw+fPjqfxkiIiIiIiJnuVBmmi9zkZsWVZCdbgpcV1c343ggECCVSjEyMsIf//hHTpw4wcmTJxkbG6NYLOK6LlVVVVRVVZHJZHAch3A47Bd9yufzOI5DKBQimUxSLBb9pcXBYJBUKkV9ff05ZaO3bdvmP+7v75+1WfH0ayIiIiIiInPtfJlpPs1FblpUQfZ8KioqsG2bbDZLLBYjn8/7FYin97yuWbOGyclJQqEQ4XDYD7+RSIRAIIDjOP4sruu6ZLNZTp48yb59+zh27BiBQIB4PD7jvnv27KGzs3M+PrKIiIiIiMiiMBe5aVEF2emmwIODg/4xy7KoqKhgdHSUVCpFb2+v/5phGMTjcdra2hgfHycYDFIqlTh+/Djd3d2MjIwwODiI67pEIhFKpRKRSITm5maCwSC2bft7bCcnJ1myZAmmOfMrO378OAANDQ2zNiuefk1ERERERGSuzZaZFoKrnZsWVZCdbgq8d+9e/1gkEsEwDAKBAOVyeUY1Y8/zyGQyWJZFJBIhGAwyPj5OdXU1ra2tTExMUCgUqK6uxrZtRkdHGRgYIBwOEwqF/KXE0WgUx3EIBoMkk8kZY2psbARg48aNfPDBBzP+h3n99depqKhg1apVc/m1iIiIiIiIALNnpoXgauemRRVkYaop8C9/+Uv/eW1tLfl8ntraWiYnJ885v1AoYBgG7e3t9Pb2EgwGqaioYOXKlWzevJnq6mpqamoYGBjwlxU7joPruoTDYSorK4Gp/yEymYxfbQvg1ltv5eabbwbgzjvvZNWqVTzwwAO8//77vPbaazzxxBNs376dcDg8p9+JiIiIiIjItLMz03ybi9y06ILsvffey49+9CP/eTgcxnEcMpkM+Xx+1mu6urr4x3/8R8bHxykUCpw6dYr9+/f7xZwGBgYol8vE43HWrl1LqVTCNE0sy2JkZITTp08TjUaxbZtIJOK/74svvug/tiyLPXv2YFkWGzdu5P7772fr1q08+eSTc/dliIiIiIiInOXszDTf5iI3Lbo+sgDpdJpUKoVlWaxevZquri5c12ViYuK81xiG4S9Dbm5uZt26dZimycTEhN8rtrKykmXLlpHP5zl9+jSZTIaenh6KxSJLly4lm83S2NhIR0cHjuPM6IckIiIiIiKyUExnpoXWR/ZqObc56iJTLpdxHGfWZcUwlfiTySTr1q0jk8kwODhIe3s7k5OTxGIxxsfHSafTVFRUkEqlGB0dxXVdbNsmk8lQKBQAcF0XwzAolUrntOERERERERGRa2dRB1nP83AcB8MwOHNi2TAMv1rXV7/6VQBs2+aNN97w+yr9xV/8Bel0mptuuolCoeDvj+3p6SEQCGDbNkNDQ/57BgIBTNPEdV0sy8K27Wv+eUVERERERK4Wq6qK8s3LCB48iZFKYnf1gOvM97AuyaIOstOFmW666SYOHDjgz542NjZi2zYDAwPs27eP4eFhWltb+dKXvkRHRwehUIj29na/wFO5XGZkZISamhrq6uro7++nt7cX13WBqVnd6VY+juPgOIvjH1dERERERGQ2gealdN3XRnapS+AvbgSg+lATlb/+I16xOOv5xevrCQ1lwfNwP/oYbx4n9xZ1kIWppcXTgRMgFothGIZfzrm7u5toNMqxY8eoqKhgbGyMTZs28cEHH+C6Lh999BHHjh0jn8/7M7srV64kGPyXdeTxeJyJiQkaGhpIp9OajRURERERkUVt4C9ayTW6rPvTTv7H5td4ovNrNP5Zmok3qrD7+mecayaTnPh6G8VqF8MNgWfQ/r/HMf/LH+dp9IuwavHZptvrVFVVEQqFSCQSpFKpGefkcjlqamqIRCK0trayYsUK1q9fTzqdJpFIEI1GiUQiNDc3YxgGfX19fr9YwzAIh8OkUilyuZxmY0VEREREZNEL5DzcCpvvt+zhtojJf/6TVzg+XoszPHrOuW42R3gUDA+sooEX8Bj8YhQjMH/zoos+yI6MjJDJZIhGo9TU1FBZWUlTUxNNTU1UV1cTjUaprKxk1apV9PX1kcvl6Onp4cCBAxw/fpzBwUGam5vxPI+uri4cx6FUKhEOh4lGo9TX17NixQqi0SiAv3xZRERERERksap54wSB4SD/7b5v8feZCp4eXU7yf6nAK5fOPdl1aPxPfQQnTeyoBx6UKsC4jL6vV9uibr8zrbq6msrKSkzTJBAIUCwWqa2tJRaLEQwG8TyPoaEhurq6CAaDFAoFXNclEAjgeR6tra1UVFRQLpeJRqN4nkexWOTUqVMEg0HC4TCZTAaYCs6maVIqldR+R0REREREFqRLar9jWpiRMGZ1FV6hgDM8csH3tOrrcNrq8QImgbEczofHLni+2u+cRzAYxLIsMpkMoVAIwzBIJpMkk0kmJyf9/azxeJwPPviAiooK4vE4sVgM27ZpbGzk1KlTHD16lEQiQV1dHZlMhlgsxvDwMOFwmHK5TLFYxDAMJicnsSwLy7IolWb5pUJERERERGSxcB3cXA43l7uk052BQRgYxADme8Plog6yAMVPKmpNTExQWVnJxMQEpVKJQqHAwMAAnudhmiae5zExMYFt25imieM4DA4OUi6XARgfH2d8fJzKykqWLVuG67pks1lCoRCmaZJOp8l98g8cmMe14CIiIiIiIp93izqRBQIBAoEAoVCIUqnE4OAg8XgcmKo0vGzZMorFIqOjo35143w+T1NTEwADAwNYlkUwGCQWi1FZWUk0GmVychLbtgkEAkxMTFAsFvE8j1gshmVZBAIBxsbG5vOji4iIiIiIfG4t6iCbz+eBqVnZUChEMpnEdV3Gx8fJZDKkUimWLFlCXV0dwWAQ05yqbdXS0kIsFqOrq4tCoYBt25RKJdLpNGNjY/6S5GKxiGmaxONxQqEQuVyOTCbDItxWLCIiIiIi8plxWVWLn3rqKdavX08ymaSuro577rmHjo6OGeds2rQJwzBm/H3rHN6LhwABAABJREFUW9+acU5XVxdbtmwhFotRV1fHo48++ql6s7quS6FQ8JcOJ5NJLMsinU5z4sQJPvroIz7++GO6u7s5cuQIb7/9Ni+99BJ/+MMf+PDDDzl8+DBHjx6lq6uLgYEBv6dsLBYjFotRKpUYGRkhn88rxIqIiIiIyHkt1Mz0WXNZM7J79+5l+/btrF+/Htu2efzxx7nzzjs5cuSIv6QXYNu2bTz55JP+81gs5j92HIctW7bQ0NDAO++8Q19fH1u3biUYDLJr164r+hCGYWCaJq7rksvlyOVyfgXjeDxOMpn02+oYhuEH0nK5TDgc9pcWA3ieRz6fp1wu4ziOH1xN0yQcDlMsFnFd94rGKSIiIiIin20LNTN91nyq9jtDQ0PU1dWxd+9ebr/9dmDq14V169bxzDPPzHrNq6++yt13301vby/19fUA7N69m507dzI0NEQoFLrofc9uvwNTYXZ6z6zrupRKpRmzp9Nhd3qP65mvOY6D67ozgiuAZVn+NY7j+OdNU/sdERERERG5kPnOTBdsvzPH5rL9zmUtLT7bxMQEMNXH9UzPP/88tbW1rF69mscee8yv9guwf/9+1qxZ4/+DAGzevJl0Os3hw4eveCzTM6z5fB7HcQiFQsTjcaLRqN+aZzrg5nI58vm8/zddCGp61jUSifjXOY5DoVDwzxEREREREblUCykzfZZccbEn13V56KGHuO2221i9erV//L777qOtrY2mpiYOHjzIzp076ejo4OWXXwagv79/xj8I4D/v7++f9V7FYtFvswP/8j/D+di2PaNY03Rl4mAw6M/cZrNZv5DTdAueUqmE4zj+84vRflkRERERETmfhZCZbMowT7HFZipXzUVuuuIgu337dg4dOsS+fftmHP/mN7/pP16zZg2NjY3ccccddHZ2snz58iu611NPPcUPf/jDK7rWdV1/JvXMf9hphULhit4XYHJy8pwlziIiIiIiIrAwMtM+fntF73c1zUVuuqIg+53vfIc9e/bw1ltv0dzcfMFzN2zYAMDx48dZvnw5DQ0NvPvuuzPOGRgYAKChoWHW93jsscd45JFH/Ofj4+O0tbXR1dV1zYNkOp2mpaWFI0eO+P1oRUREREREzvR5zkww97npsoKs53ns2LGD3/zmN7z55pu0t7df9JoDBw4A0NjYCMDGjRv58Y9/zODgIHV1dQC8/vrrVFRUsGrVqlnfIxwOEw6HzzmeSqXmrdjS0qVL/b60IiIiIiIioMx0trnKTZcVZLdv384LL7zAK6+8QjKZ9Ndnp1IpotEonZ2dvPDCC9x1113U1NRw8OBBHn74YW6//XZuvvlmAO68805WrVrFn//5nzMxMcHw8DCe5/FXf/VXs37xIiIiIiIii8XVzEwPPPAAX/jCF/jFL37B4OAgjY2NvP/++3zpS1+az4+4IFxW+x3DMGY9/txzz/H1r3+d7u5u7r//fg4dOkQ2m6WlpYWvfe1rPPHEEzN+BfjZz37Gv/23/9bv89rS0kJ3dzcdHR3+Lw4XMl1Kej7a38znvUVEREREZGG7Wpnp1KlT3HPPPRw4cIBEIsG//tf/Gsuy+Pu///tLyk3znVvm+v6XvbT4QlpaWti7d+9F3+fv/u7v+Pa3v83PfvYzYKogU0tLC7/4xS/43ve+d9Hrw+EwP/jBD+ZlBnc+7y0iIiIiIgvb1cpMbW1thEIhtm/fPiM3vfrqq5eUm+Y7t8z1/S9rRvZqKJVKxGIxXnrpJe655x7/+IMPPsj4+DivvPLKOdecXUradV1GR0epqak57y8ec8nzPCYnJ2lqatI+WRERERERueouNzcttMwEc5ubrrj9zpUaHh7GcZxZ+yIdPXp01ms+TfududTd3X3RCmQiIiIiIiKX63Jz00LNTDA3uemaB9krcXYp6YmJCVpbW+dxRFOSyeR8D0FEREREROS8mekr3EWA4LyMyabMPn47J7npmgfZ2tpaLMvy+yBNGxgYOG9PpPOVkp5v8zVFLyIiIiIin22Xm5vOl5kCBAkY8xNk+WQT61zkpmu+wTMUCnHLLbfwxhtv+Mdc1+WNN95g48aN13o4IiIiIiIiC45y04XNS6WiRx55hGeffZb/8B/+Ax9++CF//dd/TTab5Rvf+MYlXf/zn//8su9pGAaBQADTNEkmk9TV1VFZWUkgECAQCFzRrwQPPfTQjOddXV1s2bKFWCxGXV0djz76KLZtX/b7ioiIiIiIfJrcdCWZaa7MRW6alz2y9957L0NDQ3z/+9+nv7+fdevW8bvf/e6cjcyzefHFF3n88ccvep5hGMRiMcLhMKFQCMuyiEQi5PN5ampqiMfjFItFMpkMwWCQ8fFxLMsil8uRy+UoFou4rnvBezz55JP+Y8dx2LJlCw0NDbzzzjv09fWxdetWgsEgu3btuviXIiIiIiIicoYrzU2XmpmulbnITde8/c6ntWHDBtauXcuzzz476+uWZRGLxUgkElRWVvqhFKa+tGg0SjQaxXVdAoEApVKJTCaD53kEg0F/bXmhUGB4eNh/bTZnNvd99dVXufvuu+nt7fX/x9q9ezc7d+5kaGiIUCg0B9+GiIiIiIjITGdmpk385bztkbW9Mm/yypzkpkXVBLVUKvHee++xadOmWV9PJpMsXbqU+vp64vE4+Xwe13X9YNvW1oZpmpRKJSYnJ8nlcpRKJaLRKMlkEsuyCIfDZLNZAFpbW2lubiYSicx6v1wu5z/ev38/a9asmfHryObNm0mn0xw+fPjqfQkiIiIiIiLncbHMNB/mIjctqiA73Uuprq7unNcqKipobGzk+uuvJxgM+mF1YGCAU6dOcerUKQACgQChUIhwOEx9fb0/O5vP54lGo2QyGQzDoFQqkc/nWbFiBc3NzQSD5/6KsW3bNv9xf3//rD2epl8TERERERGZaxfKTPNlLnLTogqy5xMIBKitrWV8fJyPPvqI/v5+uru7GRkZoVQq4XkeN954I+l0mnw+T6FQIBKJEAwGCYVCOI7jP04kEpRKJSzLwjAM+vv7CQaD1NTUnHPfPXv20NnZOQ+fWEREREREZHGYi9y0qILsdC+lwcHBGcerqqr8WdRwOMzY2Bie5xEOh2lubmblypVYlkU2myWVShGLxaitraW6utrfG5vP5/2lxgCFQgHDMMjn85w4cYJgMOiv6z7T8ePHAWhoaJi1x9P0ayIiIiIiInPtfJlpvl3t3LSogux0L6W9e/f6x6aLOw0ODlJZWUlvb++Ma+LxOJFIhKqqKiKRCOFwmGPHjnHixAlOnz7tF3gKBAJYlkWpVCKVShGNRoGpNebBYJCJiQnq6+sxzZlfWWNjIwAbN27kgw8+mPE/zOuvv05FRQWrVq2aq69ERERERETEN1tmWgiudm5aVEEWpnop/fKXv/Sfx2IxPM+jWCziOA75fN5/rVgsMjg4yJo1a/A8j3g8Tk9PD01NTVRWVpJOpxkZGSGXyzExMUFPTw+9vb0UCgUqKirIZDKUSiXi8bg/UxuPx/33v/XWW7n55psBuPPOO1m1ahUPPPAA77//Pq+99hpPPPEE27dvJxwOX5svR0REREREPvfOzkzzbS5y06ILsvfeey8/+tGP/OeVlZV4nkdDQwPj4+PnnD8xMcGJEyfIZDJ0dnYSjUbZsGEDN910EzfeeCPJZBKAbDZLNpvFdV1/qXEwGKS6upolS5YQj8eZnJwklUr57/3iiy/6jy3LYs+ePViWxcaNG7n//vvZunXrjJ5JIiIiIiIic+3szDTf5iI3Lbo+sgDpdNoPlDfeeCNjY2OEQiFOnz49a8/XlpYWSqUS4+PjNDc3k8lkaGtr4/rrr+fw4cMMDAzQ39+PYRgsW7aMZDJJJpMBpr7ogYEBKioqsG2bVCpFR0cHMLOPrIiIiIiIyEIxnZkWWh/ZqyVwVd/tGjNN02+dk8lkZg2xAL29vViWBUzNvP7X//V/TSQSYXx8nJtuuomKigrGx8f9asXJZJJwOMzExARdXV0Ui0Xi8TiZTIZIJOLfV0RERERERK69RR1kp01XLD7bdJGnlStXksvl8DyPnp4eOjs7icfjGIZBb28vruuydu1awuEwnucRCASYmJggl8tRKBSAqU3TVVVVWJZFMBikWCxe648pIiIiIiIiLPIgaxgGwWCQqqoqstmsfzyRSNDe3o5hGNx44410dXUxMTHBwMAApVKJvr4+7rrrLjo6Oli9ejXlcplcLkcmkyGTyfj7ZXt6evz39DwP27axLOu8M78iIiIiIiKLhbXqBib+pIroUJlApoT3hw/BdeZ7WJdkUQdZx3GwbZu6ujr6+/uxbZtgMMjKlSs5cuQI+Xyejo4OAoEAzc3NbN68mdOnT+M4DrFYjBtuuIGjR49SLpfJ5/OEw2EmJyeBqf2v04HVsiwcxyEUClEqlXCcxfGPKyIiIiIiMhvji6s5/t8ksStcjEoPBhPU3bCeypcP4H6yKvVMgZZm7KXVGEWH/NI48beO4qTT8zDyT8Yzb3e+SkqlEpOTk7iui2EYpFIpjh075rfhmV4CfOLECWpra+no6ODLX/4yw8PD/kztoUOHmJycJBaLkclkWL58OZWVlYyOjgJTM7zZbJbq6mrK5bKCrIiIiIiILFpmMsnJuypwYi53f/kP/LB+Lxv3/w+MFBJUvVEBZwVZIxzm1F+1UljigmvgWR5LUqtIPf+P8/QJFmH7nbNls1ni8ThLliyhsrKS2trac/oPlUol2tragKkKxl/4whf4kz/5EwKBALZtEwqFMAyDhoYGgsEgQ0NDJBIJAAKBAIlEgoqKCs3GioiIiIjIoucVikQHPdwKmyfq36TKirH7lucJjxk4g0Pnnl8qER7z8AzA8MCA9DITMxK59oP/xKKfkZ0uyhSPxwkEAkSjUW666Sba29sZHBwkm81SUVFBe3s7J0+eJJPJ8NFHH7Fv3z5Onz5NsVhk2bJlFItFjh8/DkAwGCSbzVJTU0NtbS319fV0d3dj27aCrIiIiIiILGpeuUT984eID65ic83/mb9oPcJbA9fTsmcIZ7Z6QJ5Hw2s9FGqaKda4MH2KOX/zoou+jyzAkiVLSCaTeJ5HJBIhl8vR1NREIpEgkUhQLBYZHR3lyJEjBAIBSqUStm1TUVFBsVikrq6OmpoavyJxqVQinU6Ty+VwXRfHccjlcpimycTEBDA1y6s+siIiIiIishBdch9Z08KMhPFKJTzbvuB7WhUVuCtawDCw+kaxe3oveL76yJ7HdLucdDrth1DP84jFYuRyOb9g08DAAJOTk1RWVmKaJvF4HM/zCIfD2LZNZ2cnJ06coKGhgXA4TFVVFaVSiXw+j23bBAIBHMfx99tO96QVERERERFZ1FwHN5e7pFOddBreOwzAhSPv3FvUQdZ1XexPfjWYmJigurqa9CeVsyzLoq+vz38dYGhoCNM0qayspFQq+TOu0+91+vRpqqqq/OrExWIRy7KwLItcLuf3qg0EFvXXJiIiIiIisqgt6kQWCoUIBoN+8BwYGCCRSBAKhQiHw/zJn/wJuVyO06dPz6g2HIlECIVCFItFDMMgHA4TjUZJJpNEIhEKhQLZbBbDMCgWi4yMjOB5nr8PNxAIMDIyMs+fXkRERERE5PNpUQfZbDYLQKFQIBqNkkqlKBQKFAoFf0a1urqaFStWEAgEsCwL0zRpbW0lGo1y+vRpCoUCtm1TKpUYHx9nfHycTCZDoVDAcRxM0ySRSBAOh8lkMn6rHxEREREREZkfl1Vm6qmnnmL9+vUkk0nq6uq455576OjomHHOpk2bMAxjxt+3vvWtGed0dXWxZcsWYrEYdXV1PProozOWAF8u13XJZrOMjo5i2zaRSATbtkmn05w8eZJTp05x4sQJuru7OXr0KP/4j//Iyy+/zD/90z9x5MgRPvjgA44dO0Z3dzeDg4MUCgWCwSDxeJxkMkmpVGJoaIh8Pq8QKyIiIiIi57VQM9NnzWXNyO7du5ft27ezfv16bNvm8ccf58477+TIkSPE43H/vG3btvHkk0/6z2OxmP/YcRy2bNlCQ0MD77zzDn19fWzdupVgMMiuXbuu6EMYhoFlWX5Bpuklw9M9YBOJBLZtY9s2lmWRyWQol8sYhjFjeXI0GvVfLxaLFAoFpos6m6bpL2FWmBURERERkdks1Mz0WfOp2u8MDQ1RV1fH3r17uf3224GpXxfWrVvHM888M+s1r776KnfffTe9vb3U19cDsHv3bnbu3MnQ0BChUOii9z27/Q5MhdnpsOk4DrZtzwic02HXsiwCgYD/mmEY/rmO43Dm12Gapn/N9Otn9pFV+x0REREREbmQ+c5MF22/M4fmsv3Op+pgO91Ttbq6esbx559/ntraWlavXs1jjz1G7oxyzvv372fNmjX+PwjA5s2bSafTHD58eNb7FItF0un0jL+zeZ6H4zjk83m/n2wsFiMWixEKhTBNE9d1KZVKZLNZ8vk8+Xzer0bsui6maRIOhwmHw/5MreM4/p7bM0OsiIiIiIjIxSykzPRZcsXFnlzX5aGHHuK2225j9erV/vH77ruPtrY2mpqaOHjwIDt37qSjo4OXX34ZgP7+/hn/IID/vL+/f9Z7PfXUU/zwhz+85LGVy2XK5TLwL7OqkUiEQCCA53mEQiHS6TSmaRKLxfy2OuVy2W/pcykT1Z9iMltERERERD7jFkJmsinDPMUWm6lMNhe56YqD7Pbt2zl06BD79u2bcfyb3/ym/3jNmjU0NjZyxx130NnZyfLly6/oXo899hiPPPKI//zEiROsW7fukq51XRfXdf1ge7ZCoXBFYwKYnJw8Z4mziIiIiIgILIzMtI/fXtngr6K5yE1XFGS/853vsGfPHt566y2am5sveO6GDRsAOH78OMuXL6ehoYF33313xjkDAwMANDQ0zPoe08t9p7W1tQFTlbyudZBMp9O0tLRw5MgRmpqarum9RURERERkcfg8ZyaY+9x0WUHW8zx27NjBb37zG958803a29sves2BAwcAaGxsBGDjxo38+Mc/5ic/+Qm7d++mv7+fxsZG4vE4q1atuqRxmObU1t5UKjVvxZaWLl3qj0NERERERASubmYaHBzk17/+NU8//TQ9PT2Ypkk2m72kcSyEzARzl5suq2rxt7/9bV544QVeeeUVVq5c6R9PpVJEo1E6Ozt54YUXuOuuu6ipqeHgwYM8/PDDNDc3s3fvXmCqlHR7ezunT5/mBz/4AY2NjXz3u98F4NSpU9TV1V10HNMVuOajavB83ltERERERBa2q5WZ1q1bh2mafPjhh+zYsYPnnnuOtrY2Tp48SUdHx0Vz03znlrm+/2UFWcMwZj3+3HPP8fWvf53u7m7uv/9+Dh06RDabpaWlha997Ws88cQTMwa/bt06xsbGGBoaIh6Ps3XrVn71q1+xY8cOvve97110HAqyIiIiIiKyEF2tzHTq1CnWrl1LJpOhqqqKBx98kF27dtHe3n5JuWm+c8tc3/+ylxZfSEtLi/8rwvmUSiUOHTrESy+9xD333OMfHx4eZv/+/Zc0jnA4zA9+8IMZa8Cvlfm8t4iIiIiILGxXIzPB1DLjTCZzTm766le/ekm5ab5zy1zf/4qrFl+p4eFhHMeZtZz00aNHZ72mWCxSLBb9567rsnXrVgqFwozj18rDDz/M0NAQTU1N2icrIiIiIiJX3eXmpoWWmWBuc9M1D7JX4nL7yF4r3d3dF61AJiIiIiIiMtcWamaCuclN1zzI1tbWYlmWXz562sDAwHlLSZ/dE2liYoLW1tY5HeelSCaT8z0EERERERH5DLrc3HS+zPQV7iJAcM7HOxubMvv47Zzkpmu+LjYUCnHLLbfwxhtv+Mdc1+WNN95g48aNs14TDoepqKjw/+ajD9JszreRW0RERERE5NO43Nx0vswUIEjAmKe/TwL0XOSmeVla/Mgjj/Dggw/yxS9+kS996Us888wzZLNZvvGNb8zHcERERERERBYc5abzm5dKRffeey8//elP+f73v8+6des4cOAAv/vd787ZyHw+P//5z6/ovpZlEQgEqK6uJpFIkEqlCIfDmKZ5Rb8SPPTQQzOed3V1sWXLFmKxGHV1dTz66KPYtn1FYxURERERkc+3T5ObrjQzzYW5yE2X1Ud2IXjxxRd54IEHKJfLFzzPMAwikQixWAzLsnAch2g0Sjgcpqamhnw+D0yVx56cnKRQKOA4Do7j+JW9XNe94D3O3LQ83bS4oaGBp59+mr6+PrZu3cq2bdvYtWvX1fnwIiIiIiIiF3FmZtrEXxIw5mmPrFfmTV6Zk9y06ILshg0bWLt2Lc8+++ysrxuGQTwe92dcpwPqdPBNpVIEg0Fs28ayLDKZDMVikWAwiGEYBINBgsEghUKBkZERstnseXtBndnc99VXX+Xuu++mt7fX/4Vk9+7d7Ny5k6GhIUKh0Bx8GyIiIiIiIjOdmZkWQpCdi9y0qJqglkol3nvvPTZt2jTr6+FwmPr6eurr60mlUhSLRQzDIBAIUF9fT1NTE/l8nmw2SzqdJp/PY9s2sViMWCyG53mEQiEsyyIcDtPW1sbSpUuJRqOz3i+Xy/mP9+/fz5o1a2ZM82/evJl0Os3hw4ev6vcgIiIiIiIym4tlpvkwF7lpUQXZ6abAdXV157wWDAapr6/nxhtvpFQqMTo6SjabZWBggK6uLgYGBvyQGgwGicfjRKNRQqEQpmlSLBZZsmQJxWKRUqlELpdjfHyc6667jubmZoLBc3/F2LZtm/+4v79/1mbF06+JiIiIiIjMtQtlpvkyF7lpUQXZ8zFNk8bGRizLoqenh/HxcYaHh5mcnMRxHOrr62lubqanp4dyuUyhUMCyLFasWEE0GiWXy+F5Hq7rEg6HKRQKmKZJOBzmxIkTGIZBTU3NOQWh9uzZQ2dn5zx9ahERERERkYVvLnLTogqy002BBwcHZxyvqqrCNE26u7vp7+8nk8ngeR7JZNKfUR0eHqZcLhOPx1m5ciVtbW10dnZSKpUIhUJks1ny+TyWZQGQz+cJhULE43F/rfZsjXyPHz8OQENDw6zNiqdfExERERERmWvny0zz7WrnpkUVZKebAu/du9c/FggESCaTjIyM0NLSgm3bfnGmiYkJXNelpqaG5uZmotEo1113HePj44TDYcLhMGvWrCGVSvlLjTOZDOVymWQySTqdJp1OY9s2o6Oj/qzvmRobGwHYuHEjH3zwwYz/YV5//XUqKipYtWrVNfh2RERERETk8262zLQQXO3ctKiCLEw1Bf7lL3/pP4/H4ziOQ6lUolwu+211AMrlMtFolGQySTabZfny5axdu5YVK1bw8ccfUygUOHLkCCMjI+RyORobG/E8D9u2SSQSABSLRZLJJPl8nlKpRGVlpf/+t956KzfffDMAd955J6tWreKBBx7g/fff57XXXuOJJ55g+/bthMPha/LdiIiIiIiInJ2Z5ttc5KZFF2TvvfdefvSjH/nPKyoqsCyLlpYWJiYmZpxrGAYdHR10dXVhWRYjIyMcPXqUyspK2traqKqqwnEchoaG/D21xWLRLwIVDoeJRCIzZmvPrGD84osv+o8ty2LPnj1YlsXGjRu5//772bp1K08++eTcfykiIiIiIiKfODszzbe5yE2Lro8sQDqdJpVKYRgGN954I8VikVgsxuHDh8/p+WoYBrfddhudnZ1kMhluuOGGGS15RkZG+Kd/+ifK5TJLly4lkUjguq7fWzYUCpHL5fxKxnV1dRw7dgyY2UdWRERERERkoZjOTAutj+zVEriq73aNWZaF4ziMjo4yMTFxToid5nkeQ0NDwFT43LZtG319feTzeZYuXcr4+DgfffQRPT09xONxli9f7lcz/vjjjymVSixdupRgMEi5XCYQCGDb9rX8qCIiIiIiIvKJRR1kHcfBtm0Mw5jRZBcgHA5TX19PU1MTTU1NNDc3k0qlKBQK7N27F9M0SSaT9PX1EY1G2bRpEx0dHYyMjGCaJr29vXieR7FYBKZCczwex3VdLMtSkBUREREREZknizrImqZJMBikurqarq4u/3hraytVVVV4nkc8HufkyZOMj4/T399PNBolkUhw11138fbbb5PNZkmlUpimyXXXXceNN97I2NgYoVCI06dPA1PLky3LolQqAZxTuVhERERERGQxMYIhyrevYWJZiPigQ+KfT2H3D1zChQYYJrjO3A/yAhZ1kJ2eHYWpcFkul2loaCAcDvPhhx8SiUTo6enBsiwaGxtZtmwZmUyGfD5PPp/npptuIpfLMTg46C9RHhgYoKamZkb1Y8uyyGQyRCKR+fqoIiIiIiIiV4URCDD2393CyFoPz/IYtQyCG66jsuM6al45jJNOn3ONVVuDkYgzubaBiWUBmv8/vdgfn7z2g//Eog6ynudRLpf9mVfbtkkmk5w4cQLbtrFtG9d1ganNzvX19QwMDPCnf/qnFItFjh8/TqlU4ujRo+TzeSoqKujv76dQKFBbW8vIyAiAvyQ5FotRLpcpFArz+bFFRERERESumNXYwOhq8CxouGmQ/+WGX/PvBzfxtrWamt/N0gLHMOj/P95AtgmsokGx2qXn7ibqf9Y9bzOzi679ztmy2SzJZJJUKkVzczPxeJyKigoMw/BDLMB1111HqVTi+uuvZ+PGjdxwww2YpunPxuZyOaqqqgAolUosWbIEwzCoqKhgyZIlVFVVUSgUKJfLM95XRERERERkMXFHRkl0G+DB+iVdrA6V+dvm1wmPGDifFMmdwfMIpT3cEASzgAGFGjDjsWs+9mmLekYWpqoQV1ZWkkwmKRaLlMtlNmzYQH9/P2NjY7iuSyKRYOXKlRw4cICTJ09y9OhRGhsb6e3tZXx8nOuvv55isciRI0cAiEajZLNZmpubqampIRaL0dXV5c/yioiIiIiILFZuLkfD//MP1H7xRt76aD0b/tVK8pkwN/2/Ozlf2qn5/50ku/Q6sk0ehgvhMfAKxWs67jMt6j6y09ra2rAsi2KxSCgUwnVdqquriUajfr/Z06dPc+zYMSKRCKVSyW+j4zgO1dXVtLS0UFlZSbFYpFQqUSwWCQQCDA8PY9s2xWIRx3FIp9P+kmb1kRURERERkYXocvrIGoEAnuPARaKhGY9jNNXjJqKYJ3txxsYueL76yJ5HJBLB8zz6+/uprKzEMAxM0yQQCOC6Lv39/Rw5coRIJMLo6Kj/eiqVYmJiAsuyKBQKjI2N0d/fTyqVorq6mqamJsrlMkNDQ377HZiqkux5nl9YSkREREREZLHzLnHVqZvNwrGPAZjfmsWLPMhO95GFqV8cKisrgal9s7lcjtHRUfL5PKZp+vtaz5y1hanKx9PFm8bHx3Ech2AwSKFQIJ/P++E3nU77lYwX4SS2iIiIiIjIZ8aiDrKBQIBwOEwkEiGfzzM4OEg8HicejxOJRFi9ejUDAwMMDg7OqGBcU1NDMBikv78fy7KIxWJEo1Hi8TjBYJBcLke5XPZnbCcnJ/E8j2Qyied5hMNhv6KxiIiIiIiIXFuLOshOz5DmcjlisRjV1dWUy2VGR0cJh8NkMhlqa2uprKwkGAz6PWebmppIJpP09fVRLBZxXZdsNsvw8DCFQoF0Ou0fNwyDeDxOOBwml8uRz+fJZDLz+bFFREREREQ+1y6r/c5TTz3F+vXrSSaT1NXVcc8999DR0THjnE2bNmEYxoy/b33rWzPO6erqYsuWLcRiMerq6nj00Uc/VTVg13XJZDIMDw9TKpUIBoN4nsfk5CQnTpygq6uLzs5Ojh07RkdHB/v37+fXv/41+/fv5/333+ePf/wjJ06coLe3l4GBAQqFgj9Tm0gkKJfLjIyMkMvltKxYRERERETOa6Fmps+ay5qR3bt3L9u3b2f9+vXYts3jjz/OnXfeyZEjR4jH4/5527Zt48knn/Sfx2L/0l/IcRy2bNlCQ0MD77zzDn19fWzdupVgMMiuXbuu6ENMF3gql8vkcjn/WDAYJBKJ+GHU8zxc16VYLPqPQ6GQf31VVRWe51EoFCiVSpRKJT+4mqZJJBKhUCgozIqIiIiIyKwWamb6rPlU7XeGhoaoq6tj79693H777cDUrwvr1q3jmWeemfWaV199lbvvvpve3l7q6+sB2L17Nzt37mRoaIhQKHTR+57dfgfAMAwCgYBf2Mm27RmBc/p1y7IwDAP4lyrE0/tnHceZcY1pmliW5Z83HYanqf2OiIiIiIhcyHxnpktpvzNX5rL9zmUtLT7bxMQEANXV1TOOP//889TW1rJ69Woee+wxf5YUYP/+/axZs8b/BwHYvHkz6XSaw4cPz3qfYrFIOp2e8Xe26aBZKpVwHMefiY1EIv6sq+M4FItF8vk8+Xzer248fY1lWYTDYaLRKJFIhGAw6PeQPXN2VkRERERE5FIspMz0WXLFxZ5c1+Whhx7itttuY/Xq1f7x++67j7a2Npqamjh48CA7d+6ko6ODl19+GYD+/v4Z/yCA/7y/v3/Wez311FP88Ic/vKRxeZ6H53l+ISjDMAgGgwSDQcLhMK7rEg6HyWazBAIBQqGQH2TPDMOXEloVbEVERERE5HwWQmayKcM8xRabMjA3uemKg+z27ds5dOgQ+/btm3H8m9/8pv94zZo1NDY2cscdd9DZ2cny5cuv6F6PPfYYjzzyiP/8xIkTrFu37pKu9TyPUqkE4PeLnZycvKJxnG1ycvKcJc4iIiIiIiKwMDLTPn57ZYO/iuYiN11RkP3Od77Dnj17eOutt2hubr7guRs2bADg+PHjLF++nIaGBt59990Z5wwMDADQ0NAw63uEw2HC4bD/vK2tDZiq5HWtg2Q6naalpYUjR47Q1NR0Te8tIiIiIiKLw+c5M8Hc56bLCrKe57Fjxw5+85vf8Oabb9Le3n7Raw4cOABAY2MjABs3buTHP/4xP/nJT9i9ezf9/f00NjYSj8dZtWrVJY3DNKe29qZSqXkrtrR06VJ/HCIiIiIiInB1M9Pg4CC//vWvefrpp+np6cE0TbLZ7CWNYyFkJpi73HRZVYu//e1v88ILL/DKK6+wcuVK/3gqlSIajdLZ2ckLL7zAXXfdRU1NDQcPHuThhx+mubmZvXv3AlOlpNvb2zl9+jQ/+MEPaGxs5Lvf/S4Ap06doq6u7qLjmK7ANR9Vg+fz3iIiIiIisrBdrcy0bt06TNPkww8/ZMeOHTz33HO0tbVx8uRJOjo6Lpqb5ju3zPX9LyvITretOdtzzz3H17/+dbq7u7n//vs5dOgQ2WyWlpYWvva1r/HEE0/MGPy6desYGxtjaGiIeDzO1q1b+dWvfsWOHTv43ve+d9FxKMiKiIiIiMhCdLUy06lTp1i7di2ZTIaqqioefPBBdu3aRXt7+yXlpvnOLXN9/8teWnwhLS0t/q8I51MqlTh06BAvvfQS99xzj398eHiY/fv3z3pNsVikWCz6z/P5PDt27PCLN11LxWKRnTt3Mjw8TCKR0PJiERERERHxXY3MBFPLjDOZzDm56atf/eqsuWkhZabp8cxlbrriqsVXanh4GMdxZi0nffTo0VmvOV8p6b/927+dkzFeir/5m7+hu7v7ohu3RURERERELtfl5qaFmJlg7nLTNQ+yV+LsUtITExO0trbO44imJJPJ+R6CiIiIiIjIeTPTV7iLAMF5GZNNmX38dk5y0zUPsrW1tViW5ZePnjYwMHDJpaQXivOtfxcREREREfk0Ljc3nS8zBQgSMOYnyPLJKuu5yE3XfINnKBTilltu4Y033vCPua7LG2+8wcaNG6/1cERERERERBYc5aYLm5elxY888ggPPvggX/ziF/nSl77EM888Qzab5Rvf+Mac3tcwDCzLIh6P4zgOhmH4fZhc153Te4uIiIiIiFyO+cpNi8G8lNy99957+elPf8r3v/991q1bx4EDB/jd7353zkbm8/n5z39+SeeFw2EqKyupq6tjyZIlNDQ0cP3117N06VJuuOEG6urqaG5upqWlhSVLlrBkyRJSqRThcPiSpr8feuihGc+7urrYsmULsViMuro6Hn30UWzbvqSxioiIiIiInOnT5KZLzUzXwlzkpsvqI7sQvPjiizzwwAOUy+VZXzcMg2g0SkVFBclkkmKxiOd5finqWCxGMpnE8zw8z8NxHCYmJggEAhiG4f/XcRxGRkbIZrPnna09s/rWdNPihoYGnn76afr6+ti6dSvbtm1j165dc/NliIiIiIiInOXMzLSJv5y3PbK2V+ZNXpmT3LToguyGDRtYu3Ytzz777DmvBQIBamtrSSQS/rFQKIRt21RXV5PNZkmn09i2jWVZOI6D53kkk0kcx6FQKBAOhwmFQpimiW3bjI6Okk6nZ/RkmnZmc99XX32Vu+++m97eXv8Xkt27d7Nz506GhoYIhUJz9I2IiIiIiIj8izMz00IIsnORm+ZlafGVKpVKvPfee2zatOmc16LRKMuXL2fZsmVks1l/VrWnp4euri4aGxsJh8OYpkk4HCYSieA4DqZpUiqVKBaLNDQ0kMvlcF2XdDqNaZrccMMNNDc3E41Gz7lnLpfzH+/fv581a9bMmObfvHkz6XSaw4cPz8n3ISIiIiIicqYLZab5Mhe5aVEF2emmwHV1dTOOm6bpz7ieOnWK0dFRPv74Y0ZHRwmHw9xyyy0cPXqUvr4+PM+jVCphGAbNzc0YhkEmk6GyshLTNInH40xOTvoBd3BwkHg87v+CcKZt27b5j/v7+2dtVjz9moiIiIiIyFw7X2aaT3ORmxZVkD2fiooKTNOkp6eHgYEBisUiruuSSCRYvnw5wWAQ0zQpl8s4jkMymaSqqop0Oo1lWYRCIYaHhxkeHqZUKvnLil3XxbZtstkskUiEVCo147579uyhs7Nznj61iIiIiIjIwjcXuWlRBdnppsCDg4P+MdM0SSQSjI2NkUgkCAan1n97nkculyMYDLJq1Sr+q//qvyKVSlFXV0draysTExMkEgmqq6tpbW2lqamJeDxONBqlWCySSqVwXZdcLsfw8DADAwN+YD7T8ePHAWhoaJi1WfH0ayIiIiIiInNttsy0EFzt3LSogux0U+C9e/f6x6aX/E5XKy6VSv5r0xWHh4aGME2TYDBIfX09ExMT2LZNU1MTExMTdHd3k81micViWJZFuVymqqqKcDiM67okk0ls28YwjHNmZRsbGwHYuHEjH3zwwYz/YV5//XUqKipYtWrVXH4tIiIiIiIiwOyZaSG42rlpUQVZmGoK/Mtf/tJ/Xl1djW3bhEIhstksZxZhLpVKvP/++0SjUTo7O2lvb8cwDP7kT/6EtrY2EokEtm3T19dHV1cXra2txGIxv2VPuVzGsiw8zyMcDpPP52cE2VtvvZWbb74ZgDvvvJNVq1bxwAMP8P777/Paa6/xxBNPsH37dsLh8DX7fkRERERE5PPt7Mw03+YiNy26IHvvvffyox/9CJiahZ1eShyPx2dUw5rmOA7FYpHx8XGOHj1KJpOhWCySTqcZGxvz98IWi0W/ANT69esZGxvDNE0aGhr8vrSZTAbP8zAMA5jqzzTNsiz27NmDZVls3LiR+++/n61bt/Lkk09eg29FRERERERkypmZaSGYi9y06PrIAqTTaVKpFJZl0drayujoKJFI5Jy11gCpVIrly5dz4MABAL7whS/wb/7Nv+EPf/gDH3/8MQcPHiQajTI0NEQgECCRSHDLLbdQLBbp7u6mp6eHfD5Pa2srhUKBaDRKT08PxWJxRj8kERERERGRhWI6My20PrJXS+Cqvts1Fg6H/ZnYYrHoHzcMg5qaGlpbW0mlUoyOjlJRUUFbWxvZbJZ9+/YBU7O1119/PcFgkKVLl3L48GGGhob4+OOPqa6upq+vj0wmg2EYlEolSqUSwWDQn5EVERERERFZtEwLIxjAMAzcQmG+R3NZFnWQLZfLFItFYrEYwWCQ8fFxLMti+fLl2LZNV1cXlZWVeJ5HMpnk1KlTlEolkskkf/VXf8V/+k//iQ8//JDrr7+eRCLB6tWr8TyPQqHA6Ogo6XTav5dpmnieh+M48/iJRUREREREPj2rvo7hv1hOtsnALMHSN9PwwTG8MyYIZ2OEwxihEO7k5DUa6ewWdZCd3t8K+NWK29raGBsbo1wuU19fz6lTpzBNk9raWjZs2EA2m2ViYoLf//73xGIx4vE4juOwZMkSTpw4QX9/P01NTf77AgQCAfL5PNFoFNM0NSMrIiIiIiKLlhmP0/3A9eSaXDA88KDz/5Qk9pVbWPp3R3FGRs+9yDAwEwkG//vV5BoNlr5VwPrPf7j2g//Eoiv2dCbP8wgEAgSDQTzPIx6PEwwGGR4eJp1Oc/z4cQqFAsVikeHhYWKxGOVymS9/+ct84QtfIBwOc/PNN1MoFBgYGCCfz5PNZunu7iYQCPg9Y2traymXy4RCIb94lIiIiIiIyKK0vIV8owvT83MG2BUOmWUuRnD2/bTFu77I5J2ryNcblCpder8SwYzHr92Yz7KogyxM9YoNhULU1NTQ1tbGkiVLWLJkCYC/DNh1XW644QY6Ozspl8usWLECy7I4cOAAv//97xkdHeXtt98mFothmiaO41BZWYlhGDQ1NXHddddRV1dHoVDANM0Zs7UiIiIiIiKLyokeUh0Ghm2AB17A45E/e43IgIndf24BXQA7YjKwwcSOTtUKtqMeRjRyLUc9w6JeWgwwPj5OLBajoqKCXC7HyMgIK1asoL6+nlwuRzabpbGxkfb2dt59911c1+Xf//t/j+d5DA8Pk8/nueWWW3Bdl5MnT2IYBtXV1QC0tLT4rXrK5TKe55HNZuf5E4uIiIiIiFw5d3KSJb/4Z5asXcnEyiS5Oot/N7iFZT8/yvkqAlW8eYxM041kmz0M2yB5CtzxiWs67jMt6vY7MFWh+LrrrqNcLlMqlaioqCCZTPp7WeOfTHf39/dz/PhxwuEwruviOA7BYJBMJkNtbS2tra0kk0lCoRDZbJaxsTHi8Tjd3d2Ypunvk52cnMTzPEqlktrviIiIiIjIgnRZ7XcMAy4hFhrBEFZDHV44iNc7gJvLXfB8td85j3A4DMDw8DAVFRU4joPruriuSyAQoLe3l4GBAUzTpPBJOenp2VvXdf0gOzY2xujoKKFQiObmZpqamjAMg/7+fsrlMoZhYNs2nudhGIaKPYmIiIiIyGfHJc5teuUSdvfpOR7MpVnUQXZ6ue90xeJwOEwul2NycpJIJOL3fj3TxMSE3xc298kvCNN7aQuFAkNDQ1iWRSaToVAo+MWkJiYmyGQyAATPswFaRERERERE5t6iDrLhcBjLsjBN0w+m0WiURCKBaZo0NzcTCoUYGRnxZ2QB4vE4qVSK3t5eXNclHo8TiURIpVKYpkk2m8WyLFzXpVgsks/ncV2XaDSKZVlEo1GGhobm8ZOLiIiIiIh8fi3qIJvP5wEwTZNYLEY0GsW2bUZHR4lGo2QyGWpqavwKxJZlYVkWLS0tRKNRent7KZVKBAIB0uk06XSasbExCoUChUIB13UxDINIJOLvkS0UCv7MrIiIiIiIiFx7l9V+56mnnmL9+vUkk0nq6uq455576OjomHHOpk2b/H2k03/f+ta3ZpzT1dXFli1biMVi1NXV8eijj2Lb9hV/CNd1/b2u5XKZWCyGbdsUCgV6eno4efIk3d3d9Pb2cvLkSfbt28d//I//kUOHDvHhhx/y+9//no8++oiuri5GR0cpFouYpkk0GiUej2PbNhMTE5RKJRZhbSwREREREblGFmpm+qy5rBnZvXv3sn37dtavX49t2zz++OPceeedHDlyxK8ODLBt2zaefPJJ/3ksFvMfO47Dli1baGho4J133qGvr4+tW7cSDAbZtWvXFX+QYDCI4zjk83ny+TymaRIKhQiFQkSjUb8IlOM4/v8AhUIBy7IIBoNYlkUsFqNcLvvvM70HF6ZmfYPBoMKsiIiIiIic10LOTJ8ln6r9ztDQEHV1dezdu5fbb78dmPp1Yd26dTzzzDOzXvPqq69y991309vbS319PQC7d+9m586dDA0NEQqFLnrfM9vvTJtukWOaJrZt4zjOjMA5vbQ4EAjgeZ6/t3b63Omge+Y10+9pWRae51EsFme8rvY7IiIiIiJyIfOdmS6p/c4cmcv2O5e1tPhsExNTDXCrq6tnHH/++eepra1l9erVPPbYY351YID9+/ezZs0a/x8EYPPmzaTTaQ4fPnzFY3Fdl1Kp5O9tDYVCxGIxwuGwXxTKcRwKhQLFYpFcLudXJp5urWNZlj+DO33t9OxsoVDQTKyIiIiIiFyWhZSZPkuuuNiT67o89NBD3Hbbbaxevdo/ft9999HW1kZTUxMHDx5k586ddHR08PLLLwPQ398/4x8E8J/39/fPeq9isUixWPSfT//PcKGxTZ9vGIbfQicSiQAQCoX82dZisegvIXYch3K5fE7LnvNRsBURERERkfNZCJnJpgzzFFtsysDc5KYrDrLbt2/n0KFD7Nu3b8bxb37zm/7jNWvW0NjYyB133EFnZyfLly+/ons99dRT/PCHP7yiaz3Po1wuUy6Xr+j6C5mcnDxnibOIiIiIiAgsjMy0j99e0ftdTXORm64oyH7nO99hz549vPXWWzQ3N1/w3A0bNgBw/Phxli9fTkNDA+++++6McwYGBgBoaGiY9T0ee+wxHnnkEf/5+Pg4bW1tdHV1XfMgmU6naWlp4ciRIzQ1NV3Te4uIiIiIyOLwec5MMPe56bKCrOd57Nixg9/85je8+eabtLe3X/SaAwcOANDY2AjAxo0b+fGPf8zg4CB1dXUAvP7661RUVLBq1apZ32N6n+vZUqnUvBVbWrp0Kab5qbYYi4iIiIjIZ4wy00xzlZsuK8hu376dF154gVdeeYVkMumvz06lUkSjUTo7O3nhhRe46667qKmp4eDBgzz88MPcfvvt3HzzzQDceeedrFq1ij//8z9nYmKC4eFhPM/jr/7qr2b94kVERERERBaLq5mZHnjgAb7whS/wi1/8gsHBQRobG3n//ff50pe+NJ8fcUG4rPY7hmHMevy5557j61//Ot3d3dx///0cOnSIbDZLS0sLX/va13jiiSdm/Arws5/9jH/7b/8tgUCAeDxOS0sL3d3ddHR0+L84XMh0Ken5aH8zn/cWEREREZGF7WplplOnTnHPPfdw4MABEokE//pf/2ssy+Lv//7vLyk3zXdumev7X/bS4gtpaWlh7969F32fv/u7v+Pb3/42P/vZz4Cpal4tLS384he/4Hvf+95Frw+Hw/zgBz+Ylxnc+by3iIiIiIgsbFcrM7W1tREKhdi+ffuM3PTqq69eUm6a79wy1/e/rBnZq6FUKhGLxXjppZe45557/OMPPvgg4+PjvPLKK+dcc3Ypadd1GR0dpaam5ry/eMwlz/OYnJykqalJ+2RFREREROSqu9zctNAyE8xtbrri9jtXanh4GMdxZu2LdPTo0Vmv+TTtd+ZSd3f3RSuQiYiIiIiIXK7LzU0LNTPB3OSmax5kr8TZpaQnJiZobW2dxxFNSSaT8z0EERERERGR82amr3AXAYLzMiabMvv47ZzkpmseZGtra7Esy++DNG1gYOC8PZHOV0p6vs3XFL2IiIiIiHy2XW5uOl9mChAkYMxPkOWTTaxzkZuu+QbPUCjELbfcwhtvvOEfc12XN954g40bN17r4YiIiIiIiCw4yk0XNi+Vih555BGeffZZ/sN/+A98+OGH/PVf/zXZbJZvfOMbl3T9z3/+8yu6r2EYWJZFRUUFyWSSaDSKaZpYlnVF7/fQQw/NeN7V1cWWLVuIxWLU1dXx6KOPYtv2Fb23iIiIiIh8vn2a3HSlmWkuzEVumpc9svfeey9DQ0N8//vfp7+/n3Xr1vG73/3unI3Ms3nxxRd5/PHHL+k+4XCYUCiEYRgEg0GCwSChUIhIJEJDQwOTk5OMjIxgWRa5XA7btimVSuTz+Uv6Ip988kn/seM4bNmyhYaGBt555x36+vrYunUrwWCQXbt2XdJ4RUREREREpl1pbrqczHQtzEVuuubtdz6tDRs2sHbtWp599tnznhOJRKisrCSRSGDbNrZt47quP/NaVVUFTE3NFwoFXNfFMAz/v9OBdnx8nEKhcN77nNnc99VXX+Xuu++mt7fX/x9r9+7d7Ny5k6GhIUKh0NX6CkRERERERM7rzMy0ib+ctz2ytlfmTV6Zk9y0qJqglkol3nvvPTZt2jTr66ZpUldXx7Jly2hsbCSRSPihtrq6mnA4jOd5DA0NMTw8zPDwMLZtE4/HMQyDfD5PuVymrq6O9vZ2Wltbqa2tJRCYfeI6l8v5j/fv38+aNWtm/DqyefNm0uk0hw8fvqrfg4iIiIiIyGwulpnmw1zkpkUVZKd7KdXV1Z3zWjgcpqWlhRtvvJF0Ok0mkyGdTjM0NERtbS2pVIpQKEQ0GqWiosKv6OU4DmNjY5RKJaLRKI7jkMvlGBgYwHEcbrzxRlpbWwkGz/0VY9u2bf7j/v7+WXs8Tb8mIiIiIiIy1y6UmebLXOSmRRVkz8c0TWpqaggEAgwPDzM+Pk5XVxejo6OsWbOGiooKRkdHyefzuK4LQCAQoKKiAsdxyGazRKNRgsGgf24gEMDzPIrFIhUVFaRSqXPuu2fPHjo7O6/1xxUREREREVk05iI3LaogO91LaXBwcMbxZDKJaZp8/PHHfPjhh+RyOUqlEk1NTSSTSVKpFF/+8pcpFArYts3SpUtpa2vDdV2/ANT0XtlyuYxlWeTzebLZLH19fZRKJaqqqvx13Wc6fvw4AA0NDbP2eJp+TUREREREZK6dLzPNt6udmxZVkJ3upbR3717/mGma/ixqNBr1Nwd7nkcwGKS9vZ2xsTHefvttWltbaW9vp1wu09nZieu6OI5DfX09y5YtIxAI4DgOhmGQzWZJpVI4jsPIyAh9fX1UVVWd06qnsbERgI0bN/LBBx/M+B/m9ddfp6KiglWrVl2Db0dERERERD7vZstMC8HVzk2LKsjCVC+lX/7yl/7zZDIJQCKRIBgMUiwW/dcOHz7MP/zDP9DZ2YnjOIyPj1MsFimXywSDQRoaGohGo3ieRzQaJRqNsmLFCjzPo6Kigng8jud5/oyt4zgzZmVvvfVWbr75ZgDuvPNOVq1axQMPPMD777/Pa6+9xhNPPMH27dv9/bgiIiIiIiJz7ezMNN/mIjctuiB777338qMf/ch/Xl1djWVZOI5zTu9X27YpFoskEglSqRSrVq3CMAzWrl1LMpnEMAwcx/H3wTY2NmLbNiMjI/7+WdOc+oqi0SjFYtEPzjDVn2maZVns2bMHy7LYuHEj999/P1u3bp3RM0lERERERGSunZ2Z5ttc5KZF10cWIJ1Ok0qlMAyD5cuXMzY2RigUor+/n7M/TlVVFevWrWNycpJEIkE4HKa2tpbOzk6ampp4//336e/vZ/369TQ0NFAoFOjp6aGyspLu7m4CgQCWZdHb20uhUKCuro6TJ0/iOM6MfkgiIiIiIiILxXRmWmh9ZK+WRTcje6ZgMIjnedi2jeu654RYwzBobm4ml8vx/vvvs2/fPmpra7n11lv5sz/7M0ZGRjh9+jThcJiPP/6YI0eO0N3dzcGDBzFNk1AoxODgIKdOnSIcDtPa2ophGLO24hEREREREZFrIzDfA/g0XNelVCpRW1tLJpPxjwcCARoaGli+fDmVlZV0dnYSDAa56aabOHnypF8IKhaLccMNNxAOhykUCpw6dYpCoUA0GmVsbIyhoSGGh4fxPI9EIoFpmpimSSwWo1AozOMnFxERERER+XTMeByzIomXz+OMT8z3cC7Log6ypmkSDodxHMevJpxIJGhpaWFgYIDf//73JBIJ0uk0lmWRTqc5deoU5XKZ++67j76+Po4ePUomkyGZTLJy5Uosy/Lb9wwODuK6LqZp4nkevb29VFZWnlO5WEREREREZDExvriarn9VQTnpYRUMlv3v47gHO8B1LnidVZnCiESwBwZhHnepLuoga9s2pVKJfD7vt81ZuXIlR44c8Zcb5/N5PM+joaGB2tpampqaGBoa4h/+4R+IxWIkk0nK5TKlUon+/n7GxsZYsmTJjDXcoVCIUqlEPB6nUCjMmP0VERERERFZTAJtLRz/WhI76oIBTtTj+H0p2qrWYv3nP5z3OnPtTZzaUkU56VH/7jJi//HdeQuzi3qP7PRsaSqV8pcT53I5P9g6joPruhiGQSaT8ffTFgoF3n77bQ4ePEhjYyP19fU0NzfjOA7lcpnBwUGKxSKe52FZFq2trf4eXM/zKJfL8/3RRURERERErkippQY76oEBbmWZZWt6oTlPqeL885yBpU3kmxPYMQ8n7DGw3iRQX3cNRz3Tog6yMFXQyTRNli1bRmtrKxUVFSxfvpxQKATgLwu+8cYbGRsb4+TJk9x1112sXr2a0dFR3n77bYaGhti3bx+u6wL/EpAty6KxsZFisciSJUsol8t+GBYREREREVmMAn/4iMa3PayigRVy+V9X/q/8/vZ/x/jy8wfZctsSev48gPtJ3Vs3CF5F4hqN+FyLPshOTk7iui65XI5cLsfY2Bh1dXX82Z/9GatWraKqqor29nZWrFhBOp1mbGyMF198kVOnTtHU1EShUMA0TRobGykUCkQiEWpra6moqOC6664jFAqRz+cJh8MkEolzKiOLiIiIiIgsJm4uR/zv/4kV/+40Ff8lwv/l9F+wft//QPP/q+O811gHjlF1BMwyWEWDio/BO913DUc906LuIwv4S39LpRIADQ0NJJNJYGpmNZlM4nkeR48e5eTJk4TDYUKhELlcjsbGRrq7u0kmk9TW1rJkyRJqamqYnJxkfHycQCDA+Pg42WyWQCCAbduk02ls28a2bfWRFRERERGRBely+sga4TA4Dt7FVp4aBlZlJQQCuOMTeOXSBU+fyz6yi7rYUzQaxXVd0uk04XCYUqnEyMgIoVAIx3Ho7Oz0CzMVi0X/mng87v/XsiyKxSInTpzg5MmTLF26lKamJlzXZWhoyN8ra9u2v0d2OtSKiIiIiIgsdt4nWeniJ3o4Y2NzO5hLtKiDbKlUwnVdRkdHqampIRAIkM1m+eijj2hqaiIUCvkBdtrk5CT5fB7DMBgYGJix59XzPEZHRwkGg+RyOf94KBQim80yMTHVWykQWNRfm4iIiIiIyKK2qBNZMBjEsiwsyyKTyeA4DhUVFQQCASYmJkgmk1iWxfj4OKVSya9kXFtbSzQapaurC8/ziMfjRCIRUqkUpmlSLBYJBoOUy2WKxSJjY2O4rks0GiUYDOK6rlrwiIiIiIiIzJNFHWQLhQIwVZk4HA4Tj8cpl8tMTk4SiUSIRCIkk0mam5sJhUJEIhFc16W5uZloNEprayu5XI5AIEA6naZQKPj7XycnJ5mcnASmliMHAgGKxSKZTMavbiwiIiIiIiLX3mVVLX7qqadYv349yWSSuro67rnnHjo6Zla22rRpE4ZhzPj71re+NeOcrq4utmzZQiwWo66ujkcfffRT7Tl1XZd8Ps/ExATFYpFIJAJAPp+nt7eXrq4uurq6OH78OCdOnODdd9/l9ddf58iRIxw7dowTJ07Q1dXF6dOnOXXqFAMDA5RKJeLxOLFYzC/sVCgUFGJFREREROS8Fmpm+qy5rBnZvXv3sn37dtavX49t2zz++OPceeedHDlyhHg87p+3bds2nnzySf95LBbzHzuOw5YtW2hoaOCdd96hr6+PrVu3EgwG2bVr1xV9CMMwCAQCOI5DsVikWCximiaBQMCfqXUcBwDbtslkMpRKJSzLIhAIkMvlsCyLiooKfzmxbdsUCgW/3Y5lWQSDQX9froiIiIiIyNkWamb6rPlU7XeGhoaoq6tj79693H777cDUrwvr1q3jmWeemfWaV199lbvvvpve3l7q6+sB2L17Nzt37mRoaIhQKHTR+57ZfmfadCi1LItyuexXGZ5mmiaWZWGaJoZh+Ne4ruvvnXVdd8Y10+HVMAxc16VUKs14Xe13RERERETkQuY7M11K+525Mpftdy5rafHZpqv4VldXzzj+/PPPU1tby+rVq3nsscfI5XL+a/v372fNmjX+PwjA5s2bSafTHD58eNb7FItF0un0jL+zTc/G5nI5HMchHA4TjUaJRqOEw2FM0/TPKRQKFAoFstks+XyecrmM53mYpkkwGPSXFIfDYcrlMoVCwW/DIyIiIiIicqkWUmb6LLniYk+u6/LQQw9x2223sXr1av/4fffdR1tbG01NTRw8eJCdO3fS0dHByy+/DEB/f/+MfxDAf97f3z/rvZ566il++MMfXtbYpgtBTS87DoVCfsXhQCDgF4jK5/P+TGu5XMZxHHK53CWFVgVbERERERE5n4WQmWzKME+xxaYMzE1uuuIgu337dg4dOsS+fftmHP/mN7/pP16zZg2NjY3ccccddHZ2snz58iu612OPPcYjjzziPz9x4gTr1q27pGunA2q5XL6ie1/I5OTkOUucRUREREREYGFkpn389soGfxXNRW66oiD7ne98hz179vDWW2/R3Nx8wXM3bNgAwPHjx1m+fDkNDQ28++67M84ZGBgAoKGhYdb3CIfDhMNh/3lbWxswVcnrWgfJdDpNS0sLR44coamp6ZreW0REREREFofPc2aCuc9NlxVkPc9jx44d/OY3v+HNN9+kvb39otccOHAAgMbGRgA2btzIj3/8Y37yk5+we/du+vv7aWxsJB6Ps2rVqksah2lObe1NpVLzVmxp6dKl/jhERERERETg6mamwcFBfv3rX/P000/T09ODaZpks9lLGsdCyEwwd7npsqoWf/vb3+aFF17glVdeYeXKlf7xVCpFNBqls7OTF154gbvuuouamhoOHjzIww8/THNzM3v37gWmijK1t7dz+vRpfvCDH9DY2Mh3v/tdAE6dOkVdXd1FxzFdgWs+qgbP571FRERERGRhu1qZad26dZimyYcffsiOHTt47rnnaGtr4+TJk3R0dFw0N813bpnr+19WkJ1uW3O25557jq9//et0d3dz//33c+jQIbLZLC0tLXzta1/jiSeemDH4devWMTY2xtDQEPF4nK1bt/KrX/2KHTt28L3vfe+i41CQFRERERGRhehqZaZTp06xdu1aMpkMVVVVPPjgg+zatYv29vZLyk3znVvm+v6XvbT4QlpaWvxfEc6nVCpx6NAhXnrpJe655x7/+PDwMPv377+kcQSDQR5++GG/MvG1VCwW2blzJ8PDwyQSCS0vFhERERER39XITDC1zDiTyZyTm7761a9eUm6az8wEc5+bLmtG9mro7e1l6dKlvPPOO2zcuNE//j/9T/8Te/fu5Z/+6Z/OuaZYLFIsFv3nPT09l7yfdi51d3dfdOO2iIiIiIjI5brc3LRQMxPMTW664vY719Ll9pG9VpLJ5HwPQURERERE5LyZ6SvcRYDgPIxoqo/sPn47J7npmq+Lra2txbIsv3z0tIGBgfOWkn7ssceYmJjw/7q7u6/FUC/qfOvfRUREREREPo3LzU3ny0wBggSMefr7JEDPRW665kE2FApxyy238MYbb/jHXNfljTfemDFlfqZwOExFRcWMPxERERERkc+qy81Nn7fMNC9Lix955BEefPBBvvjFL/KlL32JZ555hmw2yze+8Y35GI6IiIiIiMiCo9x0fvNScvfee+/lpz/9Kd///vdZt24dBw4c4He/+x319fWXdP3Pf/7zK7qvYRgYhkEikaC2tpZEIuEfvxIPPfTQjOddXV1s2bKFWCxGXV0djz76KLZtX9F7i4iIiIjI59unyU1XmpnmwlzkpmtetfjTevHFF3nggQcol8sXPTcUChGJRDBNE8uyMAyDaDRKNBqltbWViYkJTp8+jeu6OI4DTFX7yufzOI5z0dLZZ1bfmm5a3NDQwNNPP01fXx9bt25l27Zt7Nq169N/cBERERERkUtwZmbaxF8SMOap2JNX5k1emZPctOiC7IYNG1i7di3PPvvsec8JBoP+unDP8yiXy8RiMQzDoFQqEY/HCYVC2LaNZVlEIhEmJycplUqYpkk2m6VYLDI5OXnBvktnNvd99dVXufvuu+nt7fV/Idm9ezc7d+5kaGiIUCh0db8IERERERGRWZyZmRZCkJ2L3DQvS4uvVKlU4r333mPTpk2zvm6aJg0NDbS3t9Pa2kpNTQ3hcJhoNApMbY4uFouMjIzQ39/P6OgouVyOcrlMuVwmk8lQLpe55ZZbaG1t9d/DsqxZ75fL5fzH+/fvZ82aNTOm+Tdv3kw6nebw4cNX70sQERERERE5j4tlpvkwF7lpUQXZ4eFhHMehrq7unNcikQjXXXcdbW1tZDIZJicn8TyPtrY22tvbyefzlMtlQqEQiUSCUChELBajUCjQ09NDPp8nGo1SKpU4ceIEtm0TDAa5/vrraWpqIhA4ty7Wtm3b/Mf9/f3nrFWfft7f33+VvwkREREREZFzXSgzzZe5yE2LKsiej2EY1NbWEo1G/cDa09OD67rEYjF6e3sJBAJkMhlKpRLBYJBAIEA8Hse2bYrFIslk0l+CPDAwQC6XwzRN8vk8VVVVVFdXn1MUas+ePXR2ds7TpxYREREREVn45iI3LaogO90UeHBwcMbxRCKB4zgcPXqUDz74gKGhIVzXZdWqVViWRSwWIxwOEwwG/eJPoVCIQqGA53mYpsnExASJRIJyuUwwGPT3yA4PDxONRqmsrCQWi50zpuPHjwPQ0NAwa7Pi6ddERERERETm2vky03y72rlpUQXZ6abAe/fu9Y9ZlkVlZSWjo6MEg0F/P2uxWOS9995jcnKSdDpNPp+npqaGxsZGampqKBaLZDIZDMMglUpRW1vr75WNx+OMjY1hWRaWZdHT08Pw8DBLliw5Z79sY2MjABs3buSDDz6Y8T/M66+/TkVFBatWrboG346IiIiIiHzezZaZFoKrnZsWVZCFqabAv/zlL/3nqVSKcDiM67qEw+EZ/Yc6Ozs5duwYIyMj1NfX47ounucRi8UIhUL+UmHHcfy2PG1tbcTjcSzLIh6PEwgE/GXJnueRTCb997/11lu5+eabAbjzzjtZtWoVDzzwAO+//z6vvfYaTzzxBNu3byccDl+bL0dERERERD73zs5M820uctOiC7L33nsvP/rRj/znyWSSUqlELBajVCrNOLdcLlNRUUEsFiOZTLJy5Uo2btxIbW0tVVVVJJNJ4vE41dXVVFVVUVNTQ2VlJSdPnsR1Xb+/rOu6/ixtVVWV//4vvvii/9iyLPbs2YNlWWzcuJH777+frVu38uSTT879lyIiIiIiIvKJszPTfJuL3LTo+sgCpNNpUqkUlmWxfPlyhoeHCYVCDAwMcPbHuf7663Fdl7a2Nq677joymQzxeJyOjg5qamooFAo4jkNFRYU/6/rmm2/S2tpKPB6nVCrhOA7pdBrXdf2ga9v2jH5IIiIiIiIiC8V0ZlpofWSvlkU3I3umYDCI4zhUVlYSjUbPCbHJZJJly5axatUqOjo6eP7554lEIqxYsYJ/9a/+Fb29vfyX//Jf+PjjjwmFQmQyGTo6OrBtm1gshud5pFIpIpEIgUCAyspKbNu+5Ca9IiIiIiIicvWd2xx1EQmFQgSDQVzXnREuKyoqaGhooKWlhcnJSYaGhggEAqxYsYKjR48yOTlJTU0NqVSK9vZ2qqqq+OCDD+jt7cUwDH/J8eDgIKdOnSKfz7NixQp/j61pLur8LyIiIiIin3eGQaC9DTcZpVgfJ3qkD/t0z3yP6pIt6iDrOA6GYZDL5chkMsBUuenKykp6enoYHx/H8zzC4TC33norExMTvPnmm+Tzef7yL/+Smpoafv/73/Pxxx8Tj8e5+eab/WXEY2Nj9Pf3k8/nCQQCOI5DMBgknU6fM/MrIiIiIiKyWBjhMJm71zG43sS1wHRgSWULqf+UwRmfuOC1ZjKJWZnC7ukD17lGIz7Xog6yxWKRfD5PoVAAppYaV1RU+M12p/e3ep7Hhx9+yNKlS2lubqampoaXXnoJANu2aW5u5vTp0/T09DA5OcmSJUuoqqoiFAqRz+dJJpPkcjlM0yQYDGpGVkREREREFq3yV1bTf6uBG3YhYeOmA/R/2cC0byT28j+d97rAdcvo/loT+SUe1UdaqPpf38Mrl857/lxa1IlsOqTGYjHC4TA33HADpmlimiae51Eul3FdF8Mw6O3tZXJyktHRUcbHx1m1ahWhUIhcLkdFRQVLly4ll8thWZY/E1sulwkGg9TU1JBIJPA8D8MwzqmOLCIiIiIisliYtguuweo1p3jvjr/lf978Erffepje/6YEn7QoPZsRDDG2voHsUhc37DG6Gsy2pdd45P9iUc/ITu9XNQyDhoYGgsEgtm2zZMkSOjo6GB0d9WdQKyoqOH36NJ7nceTIEWpqali2bBmvv/46pVKJI0eOUC6X/WXDrusSDAapr69neHiYhoYGXNcFptr6iIiIiIiILEbmfznI9dmbqPxKjiorxuZYF/9dYoiVndef/5q2pQzdYgBTeckzPQjOX5xc1DOyALlcDsdxGB8fx3EcisUiiUSCP/uzP6O1tZVgMEhDQwMrV65kcnKScDhMc3MznZ2dvP766+RyOcbHx2lrayOVSpFIJGhtbSWVSnHdddf5PWQTiYS/pHg60IqIiIiIiCw6roP3+0MM/5t6rn/z6/xf+77K/+HQf8sN//cJOE89IPdUD3X/7BIeMQmNm9S8b+Cd6L7GA/8Xi7qPLEzti21tbSWTyWAYBrW1tTQ2NvrLhKPRKLZt09HRQU9PD5WVlTiO4xdvymazRCIR4vE4S5YsoampiUwmw9jYGIFAgMnJSbLZLDC1lDmfz1MsFnEcR31kRURERERkQbrUPrJGMITZ3oLX04/7Se65EDMSAdPEzefPG3qnzWUf2UW9tHi61+vk5CSWZVEsFhkcHCQUClFRUcEf//hHcrkcnudh2zaGYWBZFpWVlZRKJWzbxnVdyuUyIyMj9Pf3MzQ0xE033UQsFqOvr88PreFw2C8eZVkWjjN/FbpERERERESuBq9cwvmo85LPdz8ptDvfFnWQLRaLuK5LsVikoqKCQCCA67p0d3f7e2bP3M/qeR7pdNqfvc3n8+e8ZyaTobOzk3K5jG3bwFRgLhaLTExM4HkeweD5f9EQERERERGRubWog2woFCIQCOB5HsVikWw2SywWIxaLMT4+TmVlJbFYjJGRET/wlstlv73OdJue6WsqKiowDINsNotpmn5V476+PgCi0SiWZWGaJhMTF+6vJCIiIiIiInNjUQfZ6RlV0zSJRCJUVlZi2zYTExOEQiFKpRLJZJJly5YRCoX8JcGNjY3EYjEaGhqYnJz032tycpJcLkehUPDDsWEYJBIJQqEQ2WyWbDarYk8iIiIiIiLz6LKqFj/11FOsX7+eZDJJXV0d99xzDx0dHTPO2bRpE4ZhzPj71re+NeOcrq4utmzZQiwWo66ujkcffdRfxnslXNcll8sxPDxMsVgkEAjgOA6ZTIb+/n5OnDhBZ2cnp0+f5tSpU+zfv59/+Id/4NChQ3R2dnL06FFOnjxJX18f4+PjlEolvz/t9LLi4eFh8vm8QqyIiIiIiJzXQs1MnzWXNSO7d+9etm/fzvr167Ftm8cff5w777yTI0eOEI/H/fO2bdvGk08+6T+PxWL+Y8dx2LJlCw0NDbzzzjv09fWxdetWgsEgu3btuqIPYZqmP9uay+X8Y4FAgEQiQTAY9As+eZ6H53n++ZZl+Xtek8kknudRKBQoFAoUi0W/r+z0+00XiBIRERERETnbQs1MnzWfqv3O0NAQdXV17N27l9tvvx2Y+nVh3bp1PPPMM7Ne8+qrr3L33XfT29tLfX09ALt372bnzp0MDQ0RCoUuet8z2+9MM03TD6Su6+I4zozAOV2xeHqPq2maGIaB4zh4nke5XD6nErFhGAQCASzLwrZt/9xpar8jIiIiIiIXMt+Z6WLtd+bSXLbfuaylxWebLnhUXV094/jzzz9PbW0tq1ev5rHHHvNnSQH279/PmjVr/H8QgM2bN5NOpzl8+PCs9ykWi6TT6Rl/Z5su5jTdLicSiRCLxYhEIoTDYX8Gtlgsks/nyWazZDIZvy/sdDXiSCRCKBQiGo0SDAZxXZdCoeDP5oqIiIiIiFyqhZSZPkuuuNiT67o89NBD3Hbbbaxevdo/ft9999HW1kZTUxMHDx5k586ddHR08PLLLwPQ398/4x8E8J/39/fPeq+nnnqKH/7wh5c1tun/EaZnVYPBoB9oLcsiHo9jWRZjY2P+zKzruti2TalUuqT7KNiKiIiIiMj5LITMZFOGeYotNlOtUOciN11xkN2+fTuHDh1i3759M45/85vf9B+vWbOGxsZG7rjjDjo7O1m+fPkV3euxxx7jkUce8Z+fOHGCdevWXdK108uGz+wnCzA2NnZFYznT5OTkOUucRUREREREYGFkpn389soGfxXNRW66oiD7ne98hz179vDWW2/R3Nx8wXM3bNgAwPHjx1m+fDkNDQ28++67M84ZGBgAoKGhYdb3CIfDhMNh/3lbWxswVcnrWgfJdDpNS0sLR44coamp6ZreW0REREREFofPc2aCuc9NlxVkPc9jx44d/OY3v+HNN9+kvb39otccOHAAgMbGRgA2btzIj3/8Y37yk5+we/du+vv7aWxsJB6Ps2rVqksah2lObe1NpVLzVmxp6dKl/jhERERERETg6mamwcFBfv3rX/P000/T09ODaZpks9lLGsdCyEwwd7npsqoWf/vb3+aFF17glVdeYeXKlf7xVCpFNBqls7OTF154gbvuuouamhoOHjzIww8/THNzM3v37gWmSkm3t7dz+vRpfvCDH9DY2Mh3v/tdAE6dOkVdXd1FxzFdgWs+qgbP571FRERERGRhu1qZad26dZimyYcffsiOHTt47rnnaGtr4+TJk3R0dFw0N813bpnr+19WkDUMY9bjzz33HF//+tfp7u7m/vvv59ChQ2SzWVpaWvja177GE088MWPw69atY2xsjKGhIeLxOFu3buVXv/oVO3bs4Hvf+95Fx6EgKyIiIiIiC9HVykynTp1i7dq1ZDIZqqqqePDBB9m1axft7e2XlJvmO7fM9f0ve2nxhbS0tPi/IpxPqVTi0KFDvPTSS9xzzz3+8eHhYfbv3z/rNdNtdabl83l27NhBoVC49MFfJcVikZ07dzI8PEwikdDyYhERERER8V2NzARTy4wzmcw5uemrX/3qrLlpIWWm6fHMZW664qrFV2p4eBjHcWYtJ3306NFZrzlfKem//du/nZMxXoq/+Zu/obu7+6Ibt0VERERERC7X5eamhZiZYO5y0zUPslfi7FLSExMTtLa2zuOIpiSTyfkegoiIiIiIyHkz01e4iwDBeRmTTZl9/HZOctM1D7K1tbVYluWXj542MDBwyaWkF4rzrX8XERERERH5NC43N50vMwUIEjDmJ8jyySrruchN13yDZygU4pZbbuGNN97wj7muyxtvvMHGjRuv9XBEREREREQWHOWmC5uXpcWPPPIIDz74IF/84hf50pe+xDPPPEM2m+Ub3/jGnN3TMAw8z8OyLBKJBLZt47oupVIJ13UvuilbRERERETkWpqP3LRYzEvJ3XvvvZef/vSnfP/732fdunUcOHCA3/3ud+dsZD6fn//855d0XigUIpFIUFlZSX19PbW1tTQ0NLBs2TLa29tZsWIFy5cvp7q6murqapYsWUJ1dfUlL2N+6KGHZjzv6upiy5YtxGIx6urqePTRR7Ft+5LeS0RERERE5EyfJjddama6FuYiN11WH9mF4MUXX+SBBx6gXC6f95xAIEAikaC6uhrP8wiHw1RWVhKPx/n444+Jx+MEg0Fc1yWZTBKJRCgWi6TTaWzbZnJyEs/zGBwcnFHC+mxnVt+ablrc0NDA008/TV9fH1u3bmXbtm3s2rXrqn8PIiIiIiIiszkzM23iL+dtj6ztlXmTV+YkNy26ILthwwbWrl3Ls88+e85rpmlSXV1NIpFg2bJlJBIJDhw4QCKRIBQKYds2Q0NDGIZBIBAgHA5TU1OD53kYhkE+n6euro6mpiZ+//vfY9s2Y2NjfsA925nNfV999VXuvvtuent7/V9Idu/ezc6dOxkaGiIUCs3tFyMiIiIiIsLMzLQQguxc5KZ5WVp8pUqlEu+99x6bNm0657VAIEBTUxNNTU3k83kmJycZGBggGAwyPDxMT08PY2NjGIZBU1MT9fX1RKNRBgYGGBgYYHR0lGKxyLFjxzhy5AiJRIKKigra2tqora2dtYFvLpfzH+/fv581a9bMmObfvHkz6XSaw4cPz8n3ISIiIiIicqYLZab5Mhe5aVEF2emmwHV1dTOOm6bp74F1HAfLsujs7CQcDmMYBrlcjomJCX9mNZPJMDw8TC6Xo1gsEg6HCQQCuK5LOBymt7eXsbExHMchFApRX19PZWXlOWWjt23b5j/u7++ftVnx9GsiIiIiIiJz7XyZaT7NRW5aVEH2fCoqKjBNk+7ubo4dO0Zvby+ZTAbHcXBdl+rqahoaGqitrSWZTBKNRolEIv71pVIJgGQyied5BAIBAoEAtm1z+vRpwuEwtbW1xGKxGffds2cPnZ2d1/SzioiIiIiILCZzkZsWVZCdbgo8ODjoHwsEAiSTSQYGBiiVSjiOA+Dvb62pqaG9vZ3Vq1cTCoX8CsXlcplyuUwkEiEajdLQ0MDExATFYpGamhomJycZGxsjEAj4RZ/q6uoIBGZ2LDp+/DgADQ0NszYrnn5NRERERERkrs2WmRaCq52bFlWQnW4KvHfvXv9YMpkkFov5oXQ6yAL09vaSz+dpbW0lEAgQiUSwbZtgMEhlZSXBYBDP87Btm3K5TG1tLc3NzUQiEQqFAvF4nFgshuM4TExMAFBZWTljTI2NjQBs3LiRDz74YMb/MK+//joVFRWsWrVqDr8VERERERGRKbNlpoXgauemRRVkYaop8C9/+Uv/eTweZ2RkhFgsRiaTmXFuPp8nFovR2dnJxMQEbW1tfOUrXyEcDrNkyRJSqRSpVIrrrrsO0zSprKwkFouRz+cpFAoYhuHP8lqWxfj4uF9tC+DWW2/l5ptvBuDOO+9k1apVPPDAA7z//vu89tprPPHEE2zfvv2S+9KKiIiIiIh8Wmdnpvk2F7lp0QXZe++9lx/96EcAWJZFMBikVCqRTCYpFAozzp0OogMDAySTSb7whS9QW1tLQ0MDruuyfPlybrzxRtra2lixYgWtra1MTEzw4YcfEolE+MIXvkA0GvV70aZSKUzT9EtCv/jii/69LMtiz549WJbFxo0buf/++9m6dStPPvnktftyRERERETkc+/MzLQQzEVuWnR9ZAHS6TSpVIpwOExTUxPFYhHDMOjp6fHPMU2TFStW0NzcjGEYuK7L4OAgX/3qV6murmZsbIzXXnuN4eFhfwrbdV3ef/99JiYmuOGGG6ivr6dQKGDbNv39/X7/2dHRUTKZzIx+SCIiIiIiIgvFdGZaaH1kr5bAxU9ZuEzTxHVdTNOc0ed1yZIlNDU1YZomH3/8Mbfccgvvv/8+hUKBQ4cOUVlZ6S8jXrJkCeFwmP7+fgYGBvwlxs3NzfT09OA4DmNjYyQSCXK5HKZpsgizv4iIiIiIiM8Ih3G/cCPlVIhCtUX1fz6J3bd42oYu6iA73SrHtm2/hc70suGjR48SCoVwHIe+vj6uu+46XNflzTffZMWKFTz++OPU1tby9ttvEwwGCQQCfPnLX2ZwcJBMJkNfXx+jo6MMDQ0Rj8dpbm6mqqqKsbExotEo2Wx2nj+9iIiIiIjI5bNqa+j971eSWebiGWB4UI62U/e/OzhDQxe81ggEsBrqcfoH8Gz7Go34XIs6yLqu6/8Fg0GSySSWZdHf3++H00wmw9tvv82yZcuor6/nT//0TzEMg//tf/vfiMfjuK5LNpslk8nQ09PDBx98QDQapba21g/HFRUVVFVVcfLkSQqFgn9cRERERERksRn7VyuYbHfxLPBiDmbU5iubPuDVZetZ9n87f5ANtLUweEczEzdARWcrS/7uj7hn1Sm6VhZdsaczua6LYRiEw2HK5TJr1qyhqqqKRCJBuVxmbGzMXwacTqcpl8sMDg5yxx13cNttt1EsFunv7/d70XZ2dlJdXc34+LhfqTgWi/l9mKaPnV1USkREREREZLFIHc8SSpus+9NO3tn8/+D9Tf+OZxp/z1//N69iVVXNfpFhkF9Rx8QNU0/Hb/Tgxuuu3aDPsqhnZG3bxrIsHMehvb2dTCZDNBpl48aN/PGPf2R4eNivbByNRhkdHaW2tpZ8Pk9vby/RaJTe3l5M0+TUqVMzZlpN0ySZTFJVVcXAwACxWMzfk3tmr1oREREREZHFxPvnD2j/uBrzDpPGQMI/frJQC6Yx6zVWTTUnN4VwQh4YgAdONMjsZ8+9RR1kAYrFIq7r0tvbi+M4tLS0UCqVaGxsZGJignK5zJIlS1izZg3vvPMOQ0NDdHZ2YlkWoVCIUqnE6Ogoq1evpq+vj2KxyJIlSzAMg2AwyODgIKlUCtd1yeVyBINBBVkREREREVnUnJFRPn5+Iyce+4+0BxPsHFjH0W/dhDfywXnPb/n/Fhn60whOCGqO2FiHPsa9xuOetuiD7ODgIHV1dWSzWUzTxLZtEokEVVVVrF27lmw2y5IlS/jnf/5nDMOgsrKScrlMsVjENE2i0SimadLX10coFGLlypUUCgXGxsYIhUJ+n1rHcXBdl0wm488Ci4iIiIiILFZLfv4uWwf+R/o3mqx4dgDv2OwhFgDPw3rzDzS8ZWFYFl65NG8hFhZ5kA0Gp/ohlUolDMOgXC7z8ccf09jYyHXXXccf/vAHCoUCH330EY7jkEwm/eXHlZWVZLNZisUiAJFIhL6+PsbGxti4cSO2bdPT00OxWPT32QYCASYmJhRkRURERERk8XMdYr/5J677DVxyunEdPHf+s9CiDrKO42DbNkNDQyQSCUKhEJ7n0dvby+TkJJFIhGw2i+d5GIbB5OQkALlcjkAgQKFQwPM8yuUymUwGwzDwPI8PP/yQXC6H67oEAgHC4TATExNks1lc18WyrHn+5CIiIiIiIp9fizrITu9zna5anMlkCAaDRCIRAKqqqkilUgwPD2OaJtlsFtu2aWhoIJlMcuzYMTzPI5lMEolESCaTeJ5HPp/371EoFBgZGcHzPCKRCIFAANM0mZiYmK+PLSIiIiIi8rm2qINsuVymXC6Tz+eJx+NUVFSQzWZJp9OUSiXC4TDxeJxly5YRDodxXZdSqURrayvBYJC6ujp/JjabzTI5OUk2m/Xf03EcTNMkkUhgWRa5XM6flRUREREREZH5cVl9ZJ966inWr19PMpmkrq6Oe+65h46OjhnnbNq0CcMwZvx961vfmnFOV1cXW7ZsIRaLUVdXx6OPPopt21f8ITzPY3Jy0u/1Go/H/XA6ODjIyZMnOXr0KKdOneLkyZP84z/+I7/73e84ePAgH330EYcOHaKrq4u+vj4mJiYoFAoEAgESiQTxeNwv/jRdIVlERERERGQ2CzUzfdZc1ozs3r172b59O+vXr8e2bR5//HHuvPNOjhw5Qjwe98/btm0bTz75pP88Fov5jx3HYcuWLTQ0NPDOO+/Q19fH1q1bCQaD7Nq164o+RDAYJBAIkM/n/T/LsggEAsTjcUKhkF+cyTRNyuUypmniOI5/HkA0GsXzPIrFIvl8fkahJ9M0CYfD/r5aERERERGRsy3UzPRZY3ifIpUNDQ1RV1fH3r17uf3224GpXxfWrVvHM888M+s1r776KnfffTe9vb3U19cDsHv3bnbu3MnQ0BChUOii902n06RSqRnHTNPENE0sy8LzPGzbnjF7ahgGlmVhWZb/2DAMHMfx/1zXnRFSTdP0KyNPv37me05MTFBRUXFpX5aIiIiIiHzuzHdm2sRfEjCCV+3zXA7bK/Mmr8xJbrqspcVnmy54VF1dPeP4888/T21tLatXr+axxx4jl8v5r+3fv581a9b4/yAAmzdvJp1Oc/jw4Ssei+u62LZNqVTCdV1/f2wsFiMYDGJZFq7rUiwWKRQKZLNZMpkM+XyecrmM53mYpkkoFCISiRCJRAgGgziOQ7FYPCcYi4iIiIiIXMxCykyfJVdc7Ml1XR566CFuu+02Vq9e7R+/7777aGtro6mpiYMHD7Jz5046Ojp4+eWXAejv75/xDwL4z/v7+2e9V7FY9Pu9AhesGDw9Gzu9fnx69nX6VwvDMAiFQlRUVGAYhl+RGPBD8HSwvRgtMRYRERERkfNZCJnJpgzzFFtsysDc5KYrDrLbt2/n0KFD7Nu3b8bxb37zm/7jNWvW0NjYyB133EFnZyfLly+/ons99dRT/PCHP7yia88OtgDZbJaxsbErer8zTU5OnrPEWUREREREBBZGZtrHb6/o/a6muchNVxRkv/Od77Bnzx7eeustmpubL3juhg0bAPj/s/fv0XHWd57v+34uda9S6eZS6WZb2Jjg+JYQ4xFkiLuTZXZjemL26j3sScCEmeOsJI474D3EgcNKdljBpJucvTm7M2e8w1ohOVlhws6tmXHH5DDewcRtJyQE343B8kWypdJdda96rucPtZ5YWLItW1JJ8H2tpWXVU89Tz69K/udTv9/v+z19+jRLliwhmUzyxhtvjDunt7cXgGQyOeFrPP7442zfvt17PDIywqJFi+js7Jz1IJnJZGhtbeXEiRM0NTXN6r2FEEIIIYQQ88MHOTPBzOemKQVZ13XZtm0bv/zlL3nttddoa2u76jWHDh0CoLGxEYD29naefvpp+vr6SCQSALz66qtUVVWxfPnyCV8jEAgQCAQuOx6PxytWbKm5uRlVvaEtxkIIIYQQQoj3GclM481UbppSkN26dSsvvvgiL7/8MrFYzFufHY/HCYVCdHR08OKLL3LPPfdQV1fHkSNHePTRR7nrrrtYtWoVABs2bGD58uV84hOfIJ1OMzAwgOu6fPazn53wgxdCCCGEEEKI+WI6M9ODDz7IRz/6Ub7//e/T19dHY2Mjhw8f5vbbb6/kW5wTptR+R1GUCY+/8MILfO5zn6Orq4sHHniAY8eOkc/naW1t5b777uPJJ58c9y3Ad7/7Xf72b//W6/Pa2tpKV1cXp06d8r5xuJKxUtKVaH9TyXsLIYQQQggh5rbpykznz59n06ZNHDp0iGg0yt/8zd+gaRo///nPryk3VTq3zPT9p7y0+EpaW1vZt2/fVV/nRz/6EV/60pf47ne/C4xW82ptbeX73/8+X/va1656fSAQ4Bvf+EZFZnAreW8hhBBCCCHE3DZdmWnRokX4/X62bt06Ljft2bPnmnJTpXPLTN9/SjOy08EwDMLhMD/72c/YtGmTd/yhhx5iZGSEl19++bJr3ltK2nEchoaGqKurm/Qbj5nkui7ZbJampibZJyuEEEIIIYSYdlPNTXMtM8HM5qbrbr9zvQYGBrBte8K+SG+//faE19xI+52Z1NXVddUKZEIIIYQQQggxVVPNTXM1M8HM5KZZD7LX472lpNPpNAsXLqzgiEbFYrFKD0EIIYQQQgghJs1MH+cedHwVGZOFyX5+NSO5adaDbH19PZqmeX2QxvT29k7aE2myUtKVVqkpeiGEEEIIIcT721Rz02SZSceHrlQmyPIvm1hnIjfN+gZPv9/Pbbfdxt69e71jjuOwd+9e2tvbZ3s4QgghhBBCCDHnSG66sopUKtq+fTvPP/88P/zhDzl58iRf/OIXyefzPPzww9d0/fe+973rvreiKEQiEQKBALqu39C3A4888si4x52dnWzcuJFwOEwikeCxxx7Dsqzrfn0hhBBCCCHEB9eN5KYbyUzTbSZyU0X2yN5///309/fz9a9/nVQqxZo1a3jllVcu28g8kZdeeoknnnjimu6jaRo+n8/70TQN27YJBoP4fD6CwSADAwNeiWzLsrAsi1KphOM4V339p556yvvdtm02btxIMpnkwIED9PT0sHnzZnw+Hzt37rym8QohhBBCCCHEmOvNTVPJTLNhJnLTrLffuVHr1q1j9erVPP/885OeEwgECIVCxGIx/H4/NTU11NTUEAwGuXjxIoZhoOs6tm0TCoWIRqMA5HI5BgYGyOVy2LZNNpvFMIxJ73Npc989e/Zw77330t3d7f3H2rVrFzt27KC/vx+/3z+Nn4IQQgghhBBCTOzSzLSeT1dsj6zlmrzGyzOSm+ZVE1TDMHjzzTdZv379pOdEo1GSySRtbW3cfPPNhMNhotEo2WyW8+fPc/HiRfr7+0mlUl5gHRkZIRgMsmbNGu6++24aGhqIRqM0NjZSVVU1ac+jQqHg/X7w4EFWrlw57tuRu+++m0wmw/Hjx6ftMxBCCCGEEEKIyVxLZpptM5Gb5kX7nTFjvZQSicRlzymKQm1tLQ0NDWQyGXw+Hz09PfT19TE4OEihUEDTNDRNY8mSJYyMjJDL5ejp6SESiWBZFidOnMA0TSKRCOFwGJ/PRyQSobe3l+Hh4cuWG2/ZsoX/9t/+GwCpVGrCHk9jzwkhhBBCCCHETLtSZqqUmchN82pGdjKaptHU1ERDQwOKonhlqnVdx3VdhoeHyWQylMtlLMuir6+PTCaDaZo4jkMoFELTNGKxGIqikMvlyOfzGIZBLBajubmZ2traywpD7d69m46Ojgq9ayGEEEIIIYSY+2YiN82rIDvWS6mvr2/c8bG9sPl8np6eHs6fP09vby+maRIKhUgkEixatIja2lrC4bA3MwujJax1XcdxHCzLQlEUVFXF7/d7e2p1XScajXp7aS91+vRpAJLJ5IQ9nsaeE0IIIYQQQoiZNllmqrTpzk3zKsiO9VLat2+fd0zTNOLxON3d3aTTaXK5HACmaRKNRkkkEtTW1lJdXY2u66iqiq7rNDU1eUWhTNMkl8uRTqexLIv6+npCoRB9fX3ous7AwIAXZMcC8JjGxkYA2tvbOXr06Lj/MK+++ipVVVUsX758Fj4dIYQQQgghxAfdRJlpLpju3DSvgiyM9lL6wQ9+4D2uq6tDURQMw8Dn83lVhh3Hob+/H8MwvJ9QKEQwGCQUClFdXY2qquTzeUKhEHV1dSxcuJDm5maam5tRVZVMJuO91vDwMIFAYNys7B133MGqVasA2LBhA8uXL+fBBx/k8OHD/PrXv+bJJ59k69atBAKB2fuAhBBCCCGEEB9o781MlTYTuWneBdn777+fb33rW97jeDxOJpMhFAp5s7EAruviOA41NTW0tbWhaRr19fWsWLECXdcpFArEYjEaGxvx+/1EIhFaWlpoaGigVCpx+vRpgsEgtm1j2zbRaJRAIEAsFvPu8dJLL3m/a5rG7t270TSN9vZ2HnjgATZv3jyuZ5IQQgghhBBCzLT3ZqZKm4ncNO/6yAJkMhni8Ti6rnPTTTcxNDSEruv09vZy6dtZvHgxdXV1qKpKQ0MDf/EXf0F1dTW7d+9meHiYqqoqTNPk1ltvJZfLkc1mOXr0KGfOnKFQKBAOh0kmkxQKBQKBAI2NjfT29nLhwgVM0xzXD0kIIYQQQggh5oqxzDTX+shOl3nVfue9AoEAlmUBo8n+0hBbVVXFLbfcQjAYxDAM/H4/586dY9myZdxyyy0UCgVeffVV6urqOH78OKVSiXQ6zalTp7z9tbfccguO4+A4DsVikfPnz+P3+/H5fJimWam3LYQQQgghhBAfaPM6yI5VH7Zt22uNo2kabW1t+P1+Ojo6CAaDtLa28u677/L73/+eD3/4w8RiMe8nl8sRCARwXZdsNks0GkVVVT7ykY9w4cIFr9LxmTNnGBoaIplM4vf7xzX1FUIIIYQQQoj5RE82kP74YqzAaI6qO5jCOnOusoOagnkdZMeMbQpWFMVb/nvpftlUKsVHPvIRotEov/nNb1i2bBmPPvoozc3N/OY3v8E0TTRNI5lM0tDQQC6Xo6enh3K5zO9+9zuqq6upr68nGo1SLBYr9TaFEEIIIYQQ4oZptyzlzP+cwIg7oIATsxjYWM0tjzVhXey+4rVKIIAaCuLk8rj/sjq2EuZ1kLVtG8dxsG2bYDBIY2MjxWKRbDaLro++NcuyGBgY4OjRo/zVX/0VDQ0NGIbBj370IxoaGohEImQyGbLZLI7j0NnZSTAYpLa2lmw2i+u6RKNRWlpaOHPmjNdvVgghhBBCCCHmHUWh55MJjGoHt9bgkx86xfaGV1nmC7Ly4S/T+q3Jg6y2tI2+v0iSa4VwNzT86AhOPj+Lg/+zeVe1+FKmaeI4DuFwmGAwyNKlS2lqaqK2thbLssYFTtM0OX78OG+88QbxeJy//Mu/xHEc3n33XUzTxHVdYrEYhmEwPDxMoVBAVVVqa2uxbZszZ84Ao7O+juNU6i0LIYQQQgghxPVzXRreyBDsV/lf1/1Xnm/9Z271h9EUlc//u1+hLVgw8XWqxmB7kkJSwYy6ZG52cT580+yO/dLhVOzO02AsgFqWheM4nDp1ClVVueuuu1jwL38ARVG8frH9/f1YloVhGJTLZUzTpKenh+7ubrq6unjrrbewbRsYbSTc3NxMbW2tt0zZtm3vfkIIIYQQQggxH7l/PMai/3ySP+UXjzu+NnQGJRqe8Bo1GCDXolCuGV2ODOBqlYuT83pp8VivWNM0KRQK+P1+EokE/f39RKNRhoaGsG2bcDjMzTffTEdHB4qisG/fPl577TU0TUNRFHK5HB/+8IcZHBwkn88Ti8Xw+/0MDQ2RTqfRNI1CoYBhGMRiMalYLIQQQgghhJjX7OFhfv1f7+Dsv3+NNl+UfyoEefz/8+9puvDHCc93CgUW/5cLDNzVTKlGoe54GfVPb1OpXq7zuo8sQDweH7efdcmSJaiqiqqqFItFOjs7aWpq4syZM/j9fkKhEJZloSiKVySqVCqhqiqGYbBkyRJc16VcLhOLxTh37hzlctmrjGxZFsViEcuypI+sEEIIIYQQYk66lj6yiq5jrF9N51/5WPJSHt44em0vrihwDTFS+shOwufzecuEYbSw0+nTp4lEIixdupTDhw+Tz+cZGhoCQFVVRkZGCIVC5PN5gsEg5XIZv9+PruuMjIxw7Ngx1q1bR6FQ4PTp0xiGgaIo+P1+NE2jv78fXddlebEQQgghhBBiXnMtC99/f5Ml/32qF1Z+LnReB1nXdSmVSvT29pJMJr1CTNlslrfffptgMEihUMB1XVRVJZvNAngtdEql0rjHY4H1nXfewTAMHMdB0zR8Pp9X/dhxHObhJLYQQgghhBBCvG/M6yCrqiqBQAC/38/IyAiO43iPVVWlvr6e6upqhoaG8Pl85PN5isUiTU1NRCIROjs7cRyHZDKJZVlUVVV5S4d1XadcLlMoFLAsC9u2CQQC6Lruzd4KIYQQQgghhJh98zrIGoaBYRgUi0XC4TCxWIxyuUwmkyEcDmPbNtFolNbWVsLhsLccuKamhkAgwMKFC8nn87iuSzabJZfLkc1mMU3TW7KsKArBYBC/30+xWKRQKEj7HSGEEEIIIYSooCnVS37mmWdYu3YtsViMRCLBpk2bOHXq1Lhz1q9fj6Io436+8IUvjDuns7OTjRs3Eg6HSSQSPPbYYze059R1XXK5HP39/ZimSSgUwjRNcrkc3d3dnD59muPHj9PR0UFHRwd//OMf+fWvf80f//hHDh8+zLFjxzh//jwXLlxgZGTEC6uRSIRoNIpt24yMjFAulyXECiGEEEIIISY1VzPT+82UZmT37dvH1q1bWbt2LZZl8cQTT7BhwwZOnDhBJBLxztuyZQtPPfWU9zgc/nMvItu22bhxI8lkkgMHDtDT08PmzZvx+Xzs3Lnz+t6ErqNpGoZhUCgUKBQK3n7XsUrFjuN4lYld1yUWi6GqKj7faAUvRVGoqakBRvfMlkolb7YW8PbKlstl2SMrhBBCCCGEmNBczUzvNzfUfqe/v59EIsG+ffu46667gNFvF9asWcNzzz034TV79uzh3nvvpbu7m4aGBgB27drFjh076O/vx+/3X/W+l7bfGTMWSn0+H6ZpYprmuNlTRVHQdR1VVb3lwq7rYhgGtm1j2/ZlhZwURcHn86Gq6rhzxkj7HSGEEEIIIcSVVDozXan9zkybyfY7U1pa/F7pdBqA2traccd//OMfU19fz4oVK3j88ccpFArecwcPHmTlypXeHwTg7rvvJpPJcPz48QnvM7bv9dKf93Ich3K5TC6Xw3VdAoEAkUiESCTiFX+ybRvDMCiVSoyMjJBOpykWi5imieu6aJpGIBAgGAzi8/nQNA3btimVSpcFYyGEEEIIIYS4mrmUmd5PrrvYk+M4PPLII9x5552sWLHCO/6Zz3yGRYsW0dTUxJEjR9ixYwenTp3iF7/4BQCpVGrcHwTwHqdSqQnv9cwzz/DNb37zmsdmGIb3u6IoqKrq9YpVFAVN07wZ3aGhIRzH8X4sy7rmteeyxFgIIYQQQggxmbmQmSxMqFBssTCBmclN1x1kt27dyrFjx9i/f/+445///Oe931euXEljYyOf/OQn6ejoYMmSJdd1r8cff5zt27d7j8+ePcuaNWuu6VrXdbFt2+sVO2Z4ePi6xnKpbDZ72RJnIYQQQgghhIC5kZn286vrG/w0moncdF1B9stf/jK7d+/m9ddfp6Wl5Yrnrlu3DoDTp0+zZMkSkskkb7zxxrhzent7AUgmkxO+RiAQIBAIeI8XLVoEjFbymu0gmclkaG1t5cSJEzQ1Nc3qvYUQQgghhBDzwwc5M8HM56YpBVnXddm2bRu//OUvee2112hra7vqNYcOHQKgsbERgPb2dp5++mm+/e1vs2vXLlKpFI2NjUQiEZYvX35N41DV0a298Xi8YsWWmpubvXEIIYQQQgghBExvZurr6+OnP/0pzz77LBcvXkRVVfL5/DWNYy5kJpi53DSlqsVf+tKXePHFF3n55Ze55ZZbvOPxeJxQKERHRwcvvvgi99xzD3V1dRw5coRHH32UlpYW9u3bB4yWkm5ra+PChQt84xvfoLGxka985SsAnD9/nkQicdVxjFXgqkTV4EreWwghhBBCCDG3TVdmWrNmDaqqcvLkSbZt28YLL7zAokWLOHfuHKdOnbpqbqp0bpnp+08pyCqKMuHxF154gc997nN0dXXxwAMPcOzYMfL5PK2trdx33308+eST4wa/Zs0ahoeH6e/vJxKJsHnzZn7yk5+wbds2vva1r111HBJkhRBCCCGEEHPRdGWm8+fPs3r1anK5HDU1NTz00EPs3LmTtra2a8pNlc4tM33/KS8tvpLW1lbvW4TJGIbBsWPH+NnPfsamTZu84wMDAxw8ePCaxuHz+Xj00UcplUrXdP50KpfL7Nixg4GBAaLRqCwvFkIIIYQQQnimIzPB6DLjXC53WW761Kc+dU25qZKZCWY+N01pRnY6dHd309zczIEDB2hvb/eOf/WrX2Xfvn38/ve/v+yacrlMuVz2Hl+8ePGa99POpK6urqtu3BZCCCGEEEKIqZpqbpqrmQlmJjddd/ud2TTVPrKzJRaLVXoIQgghhBBCCDFpZvo496Djq8CIRvvI7udXM5KbZn1dbH19PZqmeeWjx/T29k5aSvrxxx8nnU57P11dXbMx1KuabP27EEIIIYQQQtyIqeamyTKTjg9dqdDPvwTomchNsx5k/X4/t912G3v37vWOOY7D3r17x02ZXyoQCFBVVTXuRwghhBBCCCHer6aamz5omakiS4u3b9/OQw89xMc+9jFuv/12nnvuOfL5PA8//HAlhiOEEEIIIYQQc47kpslVpOTu/fffz3e+8x2+/vWvs2bNGg4dOsQrr7xCQ0PDNV3/ve9977rvrSgK0WiUaDRKMBi8oWnuRx55ZNzjzs5ONm7cSDgcJpFI8Nhjj2FZ1nW/vhBCCCGEEOKD60Zy041kpuk2E7lp1qsW36iXXnqJBx98ENM0r3qupmnouo7f7/dCq2VZxONxNE0DIJ1O47oupmlimiaWZeE4DrZtX7V09qXVt8aaFieTSZ599ll6enrYvHkzW7ZsYefOnTf+xoUQQgghhBDiGlyamdbzaXSlQsWeXJPXeHlGctO8C7Lr1q1j9erVPP/885Oe4/P5vHXhgUCAQCDAggULsG0by7IYHh7GcRx0XSccDpPNZjEMA8uyvHMMwyCdTl8xMF/a3HfPnj3ce++9dHd3e9+Q7Nq1ix07dtDf34/f75/eD0IIIYQQQgghJnBpZpoLQXYmclNFlhZfL8MwePPNN1m/fv2k51RVVdHS0kJdXR01NTW0tbWxYMECstksqVSKjo4OBgcHGR4eJpvNksvlcByHZDLJzTffTCQSQVVVQqEQyWSSaDQ66fLjQqHg/X7w4EFWrlw5bpr/7rvvJpPJcPz48Wn7DIQQQgghhBBiMteSmWbbTOSmeRVkBwYGsG2bRCJx2XOKolBbW0tTUxOlUoloNEo6neZ3v/sdf/rTnzh79iwXL14kEAiwatUqPv7xj6NpGn19fQDkcjk6OjoYHh4mEAgQi8VIJpO0tLRQU1MzYZjdsmWL93sqlbpsrfrY41QqNZ0fgxBCCCGEEEJM6EqZqVJmIjfNqyA7GUVRqK+vZ+HChWiaRjAYJJ1OA6P7ZAuFAsPDw/j9fgzDQFVVhoaGgNEy1cFgEMMwiMViaJpGqVQil8thWRbV1dUkk0nq6uouC7O7d++mo6Nj1t+vEEIIIYQQQswXM5Gb5lWQHWsKPDaLOiYWixGNRtE0je7ubs6fP08+nycSibB48WJuv/12br31Vi+onjt3jlOnTpHNZnEch0wmQ7lcZnBwEEVR0DQN27Ypl8t0d3ejqqpX5fi9Tp8+DUAymZywWfHYc0IIIYQQQggx0ybLTJU23blpXgXZsabA+/bt847puk51dTWDg4O88847pNNpHMdhaGgIXddRFIVcLofP58PnG93kbJomtbW1BAIBdF1H13XK5TKO4+A4DpFIhFgsRrlcRtd10uk09fX11NXVoevjW+82NjYC0N7eztGjR8f9h3n11Vepqqpi+fLls/DpCCGEEEIIIT7oJspMc8F056Z5FWRhtCnwD37wA+9xNBqlVCqRzWZRVRXHcYDRTc6lUolCoUBvby+9vb2Ypkl1dTULFiygsbER13XJZrPYts1NN91Ec3MzH/7wh1m4cCHxeJyenh50XfcCbjQapbq62rv3HXfcwapVqwDYsGEDy5cv58EHH+Tw4cP8+te/5sknn2Tr1q0EAoHZ/IiEEEIIIYQQH2DvzUyVNhO5ad4F2fvvv59vfetb3uNYLIZpmoRCIQzDQFEUby+raZrouk5VVRXBYJAPfehDtLS0EAwGGRkZobq6moaGBhoaGigUCiSTSSKRCHV1daTTaW9Preu65PP5cbO6MNqfaYymaezevRtN02hvb+eBBx5g8+bNPPXUU7P34QghhBBCCCE+8N6bmSptJnLTvOsjC5DJZIjH4/h8Ppqbm72QmUqlvBlZRVH41//6X3tViDVN48477+Tmm29m7969DA8PU1tbS19fH+FwGE3T8Pv95PN5jh8/Tnd3t1cJWVVVfD4fbW1tnD9/nlQq5fWZHeuHJIQQQgghhBBzxVhmmmt9ZKeLfvVT5q5wOEwwGMQ0Tfx+vxdiNU1j2bJlNDQ0UCwW0XWdUqmEqqoEg0H+6q/+iuPHj/PKK694PWYVReHMmTP09vZiWRaaprFo0SKCwSC5XA7TNLlw4QK2bXtVjoUQQgghhBBi3lK10X9dB+bZ/Oa8DrK2bWOaJsVikVKpBEAoFOKmm24ik8lw4MABfD4fdXV1WJbFD3/4Q9auXUtNTQ3RaJRIJEImk8Hn81FTU4Ou6/j9fq/a8Vi1Yr/fT19fHxcvXiSZTBKNRslkMhV+90IIIYQQQghxHVQNd90K+j4WwVVBtaH2RBn9N3+aN4F2XgdZ13VxXRefz4eiKPj9flpaWnj77bfRNA1d13Fdl76+PtatW0ddXR179+5lwYIFPPHEE1RXV3Pw4EEA6urqWL9+PRcuXGBwcJBisYiiKJw7d46FCxcSiUQoFos4joNpmhV+50IIIYQQQghxfdx1Kzh7XxhHd3B9Lp+8/RhNwRH+8G9vxT51+orXKj4/qAquaYFjz9KILzevgyyMFnRSFAVd11m6dCmDg4PYto1t2+OW/54/f56PfOQjrF27lmAwyD/+4z8Sj8epqalhYGCAcrnMO++8Q1dXF6qqEovFyOVy5PN5hoeHiUaj1NfXUyqVsCyrgu9YCCGEEEIIIa7f8K1h7IBL3ZIh7m45yTcWHMKnaNz88F3c9LXJg6zetogLm5oxwxDpcVnws+PYFVqpOu+qFl/KcRxv3+tYQaempibq6uouO3dgYID9+/dz+PBhdF3nE5/4BKqq8sYbb5DJZPjd735HJpPBNE36+vrIZrPE43GampowDIPu7m5M08Q0TQmyQgghhBBCiHkr8X9fBMXlN2v+v3wrcRSfMrpX9un/8UW0ZUsmvkhR6L+riXyTS7nOYWiFS/ljN8/iqMeb10HWMAwcx8EwDHK5HLlcjkKhwPLlywmHw+POzWQyDAwMeMuQ3333XUqlEsPDw3R2dlIqlXj33XcZHh72liuPtd4pFov4/X5vubEUehJCCCGEEELMV9a5Tj70D/3892L9uOPrQ90UltROfJGiYkYUXM0FBVRLQXEqt592Xi8ttm0bRVGwLMvr8VpbW0sul6O2tpZSqYTjOASDQRoaGujp6cGyLA4ePEipVMLv93sB9SMf+QjZbNbrSQujs7i5XI5AIOAF2HA4LHtkhRBCCCGEEPOaffos21/5LJ/Y9L9To4X555LDwz/5jyz5zVs4E13g2DT+l5NUr1tKtlWn9ngB5XfHZnvYnnkdZAGy2axXiKlYLHo9YZubm4lGo6RSKWpra72lwmPnjoXSQCBAJpOho6MD13W9asa2baOqKrquY5omqjo6eZ3L5VBV1Wv1I4QQQgghhBDzjutyy2OH+Te/eZSBlRoL92Rp+8PvcK5QtdgeHsb/yh+4fCPn7JvXQTYUCmGaJo7jYNs2juNw7tw5gsEgTU1NXLhwgVwuRzqdxu/3e3tcTdPEMAxGRkbQNA1N07xlyul0mpaWFvr6+rwZXUVRvPA61pdW9skKIYQQQggh5jOnVCL8i9+z8BeVHsnUzesga5ompVKJUqlEbW0tqqpSLpcpl8v09PQQiUTI5/O4rusF3ZGREe96x3G8oOq6LqqqUl9fT2dnp7cf1ufzoWkapVKJTCaD4zjo+rz+2IQQQgghhBBiXpvXiUzXdUKhEJqmkc1mcRwHv99PIBBAVVXi8TjxeJzBwUF0XadUKpHL5airqyOZTHL69Gls2+amm24ik8kQi8VwHIdSqUQgEPDOH9sTGwwG0XUdTdMYHh6u8LsXQgghhBBCiA+meR1kx2ZjVVUlHA4TjUa98Dm2hzUUCpFMJr3CTgDRaJR4PE5jYyPFYpFyuYyu62SzWYrFIoVCgXK57O2NjUQi6LpOoVCgWCziXmHduBBCCCGEEEKImTWl9jvPPPMMa9euJRaLkUgk2LRpE6dOnRp3zvr161EUZdzPF77whXHndHZ2snHjRsLhMIlEgscee+yG9py6rksul2NgYMCrOuy6Lul0mlQqxdmzZ+no6ODEiRO8/fbbvPXWW/zqV7/iwIEDHD16lLfffpuzZ89y8eJFBgcHvXAciUSIRCIYhsHw8DDlcllCrBBCCCGEEGJSczUzvd9MaUZ23759bN26lbVr12JZFk888QQbNmzgxIkTRCIR77wtW7bw1FNPeY8v7elq2zYbN24kmUxy4MABenp62Lx5Mz6fj507d17Xm1BV1ev7OjZLO7a/NRwO4/f7vRla13UxDINQKOS17hnrGxsIBNA0jVwuh2EY44LrWFEoy7KkYrEQQgghhBBiQnM1M73fKO4NTDH29/eTSCTYt28fd911FzD67cKaNWt47rnnJrxmz5493HvvvXR3d9PQ0ADArl272LFjB/39/d7y3yvJZDLE4/Fxx8Za5aiqim3bXkAdM1Z5eKxQUyAQwHEcLMvyzrVt+7LX9Pl8uK7rVUa+9DXT6TRVVVVX/6CEEEIIIYQQH0iVzkzr+TS64pu29zMVlmvyGi/PSG6a0tLi90qn0wDU1taOO/7jH/+Y+vp6VqxYweOPP06hUPCeO3jwICtXrvT+IAB33303mUyG48ePT3ifcrlMJpMZ9/NejuN4s6gAfr+fSCRCMBjE5/Ohqqo3Gzv2erlcjlKp5AVUXdcJBoMEg0FisRiBQADbtjEM47JgLIQQQgghhBBXM5cy0/vJdRd7chyHRx55hDvvvJMVK1Z4xz/zmc+waNEimpqaOHLkCDt27ODUqVP84hejzYlSqdS4PwjgPU6lUhPe65lnnuGb3/zmNY3LdV2vynC5XEZRFG9ZcDAYRFVHs3tNTQ2maZLP5zFNE0VRMAwD0zSxbZtSqXRN9xJCCCGEEEKIicyFzGRhQoVii8VoLpuJ3HTdQXbr1q0cO3aM/fv3jzv++c9/3vt95cqVNDY28slPfpKOjg6WLFlyXfd6/PHH2b59u/f47NmzrFmz5pqudV3X2xRtGIZ3/NJ+stcrm81etsRZCCGEEEIIIWBuZKb9/Or6Bj+NZiI3XVeQ/fKXv8zu3bt5/fXXaWlpueK569atA+D06dMsWbKEZDLJG2+8Me6c3t5eAJLJ5ISvEQgECAQC3uNFixYBo5W8ZjtIZjIZWltbOXHiBE1NTbN6byGEEEIIIcT88EHOTDDzuWlKQdZ1XbZt28Yvf/lLXnvtNdra2q56zaFDhwBobGwEoL29naeffppvf/vb7Nq1i1QqRWNjI5FIhOXLl1/TOMaWB8fj8YoVW2pubvbGIYQQQgghhBAwvZmpr6+Pn/70pzz77LNcvHgRVVXJ5/PXNI65kJlg5nLTlKoWf+lLX+LFF1/k5Zdf5pZbbvGOx+NxQqEQHR0dvPjii9xzzz3U1dVx5MgRHn30UVpaWti3bx8wWkq6ra2NCxcu8I1vfIPGxka+8pWvAHD+/HkSicRVxzFWgasSVYMreW8hhBBCCCHE3DZdmWnNmjWoqsrJkyfZtm0bL7zwAosWLeLcuXOcOnXqqrmp0rllpu8/pSCrKMqEx1944QU+97nP0dXVxQMPPMCxY8fI5/O0trZy33338eSTT44b/Jo1axgeHqa/v59IJMLmzZv5yU9+wrZt2/ja17521XFIkBVCCCGEEELMRdOVmc6fP8/q1avJ5XLU1NTw0EMPsXPnTtra2q4pN1U6t8z0/ae8tPhKWltbvW8RJmMYBseOHeNnP/sZmzZt8o4PDAxw8ODBCa8pl8teWx2AYrHItm3brqmy8HQrl8vs2LGDgYEBotGoLC8WQgghhBBCeKYjM8HoMuNcLndZbvrUpz41YW6aS5lpbDwzmZuuu2rx9RoYGMC27QnLSb/99tsTXjNZKel/+Id/mJExXou/+7u/o6ur66obt4UQQgghhBBiqqaam+ZiZoKZy02zHmSvx3tLSafTaRYuXFjBEY2KxWKVHoIQQgghhBBCTJqZPs496PgqMiYLk/38akZy06wH2fr6ejRN88pHj+nt7b3mUtJzxWTr34UQQgghhBDiRkw1N02WmXR86Eplgiz/ssp6JnLTrG/w9Pv93Hbbbezdu9c75jgOe/fupb29fbaHI4QQQgghhBBzjuSmK6vI0uLt27fz0EMP8bGPfYzbb7+d5557jnw+z8MPPzzj91YUhXA4TKlUQtd1DMO46oZsIYQQQgghhJhtlcxNc11FSu7ef//9fOc73+HrX/86a9as4dChQ7zyyiuXbWSezPe+971rOk9VVUKhEJFIhHg8Tl1dHQsWLCAajdLQ0EBVVRWJRIJEIkF1dTWxWIxAIHDNFbUeeeSRcY87OzvZuHEj4XCYRCLBY489hmVZ1/RaQgghhBBCCHGpG8lN15qZZsNM5KYp9ZGdC1566SUefPBBTNOc9BxVVYnFYkSjUUKhEK7r4jgO1dXVRKNRhoeHvXMty8I0TQzDQNM0LMuiXC5TKpUol8sYhjHpfS6tvjXWtDiZTPLss8/S09PD5s2b2bJlCzt37py+D0AIIYQQQgghruDSzLSeT1dsj6zlmrzGyzOSm+ZdkF23bh2rV6/m+eefn/D5SCRCdXU14XCYqqoqIpEIFy9eJBgMYpompmli2zaapnk/pVKJUqmEoihYloXf7/c2JGezWbLZ7ITLjy9t7rtnzx7uvfdeuru7vW9Idu3axY4dO+jv78fv98/QJyKEEEIIIYQQf3ZpZpoLQXYmclNFlhZfL8MwePPNN1m/fv1lz6mqSn19PU1NTbiuS1VVFQMDAxw5coRcLkcqlSKVSnl7Y0OhEOFwGNM0CQQCVFVVEQwG8fl83r91dXU0NTVNWi66UCh4vx88eJCVK1eOm+a/++67yWQyHD9+fNo/CyGEEEIIIYR4rytlpkqZidw0r4LsWFPgRCJx2XP19fXcfPPN1NTUEIlEKJfLwGi1r0wmQ6FQQFEU/H4/Pp8Pn89HKBRiwYIFaJpGXV2dF2ANw0BRFFzXpaamhqamJqqrqy+755YtW7zfU6nUhM2Kx54TQgghhBBCiJl2pcxUKTORm+ZVkJ1MVVUV4XAY13Xp6urizJkz2LaN3++nurqa1atXk0wmicViOI5DPp+nv7+fnp4eBgYGKBaLZDIZstksiqKgaRq2baOqKqlUimAw6O25vdTu3bvp6Oio0LsWQgghhBBCiLlvJnLTvAqyY02B+/r6vGN+v59oNIqiKLz77rv09fVh2zZdXV0Eg0EA+vr6UFWVaDSKpmkoikIwGMTv91Mul8nn85RKJa/Yk8/nIxqNYlkWjuMwPDxMIpGgqqoKTdPGjen06dMAJJPJCZsVjz0nhBBCCCGEEDNtosw0F0x3bppXQXasKfC+ffu8Y7FYDF3XyWQywGgVLIBSqURVVZVXhTiXy5HP51mwYAEtLS2Ew2HK5TLlchlFUWhra6O1tZXGxkY++tGPkkgkeOedd/D5fF6BqJqamsv2yzY2NgLQ3t7O0aNHx/2HefXVV6mqqmL58uUz/dEIIYQQQgghxISZaS6Y7tw0r4IsjDYF/sEPfuA9HmuvA3j7Yse4rktTUxOBQABd11m2bBmtra0Eg0FCoRC1tbU0NDSwatUqBgcHKZVKxGKxccuMdV1HVVVyuRyBQIB4PO5VNL7jjjtYtWoVABs2bGD58uU8+OCDHD58mF//+tc8+eSTbN26lUAgMDsfjhBCCCGEEOID772ZqdJmIjfNuyB7//33861vfQvAWx6sqio+n49iseidF4vFUFWVvr4+NE0jHA5jWRatra2Ypomu6yxdupRAIMDAwADV1dXU19ezZMkSmpubOXPmDIqiUCwWMQwDwzC8DdNjJaFfeukl736aprF79240TaO9vZ0HHniAzZs389RTT83ipyOEEEIIIYT4oLs0M80FM5Gb5l0fWYBMJkM8Hqeqqor6+nqi0Si6rvOnP/0JGC3+9LGPfQyfz0d3dzfxeJyRkRGWLl3KqlWrSCQS/Pa3v+XIkSPU1dXhOA4jIyNkMhna2tq4cOECnZ2dNDc3e71lYTQ4F4tF0uk0+Xx+XD8kIYQQQgghhJgrxjLTpH1kFQWttgZMCzuXB9eBaY6GE/WRnS76tL7aLAsGg9TX1zMwMOAdq6urIxaL8dZbb6HrOpqmeUWcXn31VYaGhqipqaG+vp5kMkk6nUZRFPL5PKFQiJ6eHorFIsuWLWPBggV0d3d7e3D7+vouKxUthBBCCCGEEPOJVlXFwH0fJn0z6AUFvQjVpy2Cu/8w7WF2psy7pcWXMk2ToaEhVFVFVVWCwSCBQIDz58+TTCaxLIvBwUFOnTpFTU0NixYt4uDBgxw6dIgVK1Zw5513Ul1dTTgcZunSpbS3t3PbbbfR2tqKoigYhsFHP/pRVFVFURQikQiqqnpLi4UQQgghhBBivkn/D8sZXO1iRVxKCQfr42lWfv0wrFt51Wu1BQvQb1qMUuE6QPN6RtY0TQqFAoqioCgKixYtIpPJ4Loub7/9NjC6BrtYLHLu3DmWLVtGTU0NQ0NDvPbaa0QiEQKBALZts3jxYmzb5le/+hW6rlNbW8vQ0BCu65LP57Esi3g8jqqqVFdXMzw8XOF3L4QQQgghhBBTZ/sBBZyYxfoVp/jfmn9NjRbmps+u4ebfTX6dGgzS9+mlpJdBuKeJ5h+dwh4YnLVxX2peB1nA6w/b09ODz+ejoaEBVVW5ePEigLe/tVAo8Ic//AGfz8df/uVfsnbtWnp7ezl06BDFYpHz5897gXWsQnEikaBYLBIKhcjlcgDeHlkhhBBCCCGEmI9q/+kUI8s+xC/v+z+41R8GwgD8Pz7xGvsbFmH3TtyDNvPXqxm51cVVINfqkvnEUiI/lyA7ZYZhoCgK2WwW27bJZrO4rktbWxsDAwPj2vGMhc/6+npOnz5Nb28vmqYxODjIyMgIjY2NDAwM4Louuq4TCoUYGBggHA6TyWQIBALk83k0TWMe1scSQgghhBBCCADs4WFu+i8DDD0QHHf8/vibvN66FiYJsqoNuIACqqEQGDZnfrCTmPdBVtM08vk89fX1BINBdF2nr6+Pmpoa+vr6cByHcDjsFWwql8tcuHCBTCZDdXU1pVIJ0zRJJBLU19eTy+WIRCLYts3AwABDQ0MAXoAd2zsrhBBCCCGEEPOVfeoMD7zyBf70189RpQb5eb6Gp77/JVoO/3HSayL/7S2Wnr2Z/OIo0Y4RnKOnZnHE483rIAtQLpfx+Xyk02kymQwtLS1EIhGvj2xvby+1tbWUSiWqqqoIBALev67r4jgOoVCII0eO4PP5cF2Xm2++2dt3C2DbNqqq4roupmmiqiqO41T4nQshhBBCCCHEdXJsPvQfj7HpV4+Qvkmn6Vc9NJ8+wJXWnrqmAW8dJ/wWVDoNzesgO7bst6mpib6+Pmzb5uzZs0SjURoaGrwlxxcvXkTXdRRFoVwue0uOy+UyiqLgOA6GYeA4jleV+MKFCxSLRW+p8ViQTafTqOq8LvYshBBCCCGEEDiFAsHdbxAE7EoPZormdZA1DAPbtjl//jx1dXWYpolt2xQKBXp7e6mqqiKXy3l7WseWBJfLZTRNw7ZH/1yKonizs8lkkp6eHgzDwOfzoSgKuq6TzWbJZrM4joOmaRV7z0IIIYQQQgjxQTevg6ymaQQCAS9oWpZFMBgkFArh9/vx+XzcdNNNZDIZ/H4/pVKJkZERGhoaSCaTvPvuuxiGwa233ko2myUcDmNZFoVCAV3XMU2TXC6HaZq4rovf70dVVW+/rRBCCCGEEEKI2Tevg+zYMmFVVYlEIkSjUQzDYHh4mGg0it/v99roBAIBNE1DURSi0Sh1dXUkk0nS6TSGYRAMBhkZGaFYLFIsFrEsyysmFYlE0DSNcrnsLTcWQgghhBBCCFEZU9rs+cwzz7B27VpisRiJRIJNmzZx6tT4SlXr16/3CiWN/XzhC18Yd05nZycbN24kHA6TSCR47LHHvH6v18N1XbLZLIODg96srGVZpNNpent7OXv2LO+88w4nT57k7bff5q233uK//tf/yj//8z9z9OhRTpw4wblz5+jt7WV4eBjTNNE0jWg0SiQSoVQqMTw8TKFQkBArhBBCCCGEmNRczUzvN1Oakd23bx9bt25l7dq1WJbFE088wYYNGzhx4gSRSMQ7b8uWLTz11FPe43A47P1u2zYbN24kmUxy4MABenp62Lx5Mz6fj507d17Xmxhb8lsulykUCgCoqoqmaYRCIa9CMeAVdgqHw6iqimEY+P1+FEXB7/ej6zqFQgHDMMbNvuq6jqZpWJbl7a0VQgghhBBCiEvN1cz0fqO4NzDF2N/fTyKRYN++fdx1113A6LcLa9as4bnnnpvwmj179nDvvffS3d1NQ0MDALt27WLHjh309/fj9/uvet9MJkM8Hh//RhQFn8/nPbYs67IWOZdWHx4Lt2P7Xx3HuSygaprmXWPbtnfumHQ6TVVV1VXHK4QQQgghhPhgqnRmWs+n0RXfVc+fCZZr8hovz0huuqE+Mul0GoDa2tpxx3/84x9TX1/PihUrePzxx71ZUoCDBw+ycuVK7w8CcPfdd5PJZDh+/Ph1j8V1XQzD8CoTBwIBb9+s3+9H0zQcx8E0Ta+IUz6fxzAMb4pe13X8fj/hcNgrGGVZFsViEcMwZFmxEEIIIYQQYkrmUmZ6P7nuYk+O4/DII49w5513smLFCu/4Zz7zGRYtWkRTUxNHjhxhx44dnDp1il/84hcApFKpcX8QwHucSqUmvNelvV/hz/8ZJjMWZuHPS4x1Xcfn83kFnyKRCLZtk8vlvF6yY7Ou7515nYwEWyGEEEIIIcRk5kJmsjChQrHFwgRmJjddd5DdunUrx44dY//+/eOOf/7zn/d+X7lyJY2NjXzyk5+ko6ODJUuWXNe9nnnmGb75zW9e17WO43hLjC/9w46MjFzX610qm81etsRZCCGEEEIIIWBuZKb9/Oq6Xm86zURuuq4g++Uvf5ndu3fz+uuv09LScsVz161bB8Dp06dZsmQJyWSSN954Y9w5vb29ACSTyQlf4/HHH2f79u3e45GRERYtWkRnZ+esB8lMJkNraysnTpygqalpVu8thBBCCCGEmB8+yJkJZj43TSnIuq7Ltm3b+OUvf8lrr71GW1vbVa85dOgQAI2NjQC0t7fz9NNP09fXRyKRAODVV1+lqqqK5cuXT/gagUCAQCBw2fF4PF6xYkvNzc2o6g1tMRZCCCGEEEK8z0hmGm+mctOUguzWrVt58cUXefnll4nFYt767Hg8TigUoqOjgxdffJF77rmHuro6jhw5wqOPPspdd93FqlWrANiwYQPLly/nE5/4BOl0moGBAVzX5bOf/eyEH7wQQgghhBBCzBfTmZkefPBBPvrRj/L973+fvr4+GhsbOXz4MLfffnsl3+KcMKX2O4qiTHj8hRde4HOf+xxdXV088MADHDt2jHw+T2trK/fddx9PPvnkuG8Bvvvd7/K3f/u36LpOJBKhtbWVrq4uTp065X3jcCVjpaQr0f6mkvcWQgghhBBCzG3TlZnOnz/Ppk2bOHToENFolL/5m79B0zR+/vOfX1NuqnRumen7T3lp8ZW0trayb9++q77Oj370I770pS/x3e9+FxgtyNTa2sr3v/99vva1r131+kAgwDe+8Y2KzOBW8t5CCCGEEEKIuW26MtOiRYvw+/1s3bp1XG7as2fPNeWmSueWmb7/lGZkp4NhGITDYX72s5+xadMm7/hDDz3EyMgIL7/88mXXvLeUtOM4DA0NUVdXN+k3HjPJdV2y2SxNTU2yT1YIIYQQQggx7aaam+ZaZoKZzU3X3X7neg0MDGDb9oR9kd5+++0Jr7mR9jszqaur66oVyIQQQgghhBBiqqaam+ZqZoKZyU2zHmSvx3tLSafTaRYuXFjBEY2KxWKVHoIQQgghhBBCTJqZPs496PgqMiYLk/38akZy06wH2fr6ejRN8/ogjent7Z20J9JkpaQrrVJT9EIIIYQQQoj3t6nmpskyk44PXalMkOVfNrHORG6a9Q2efr+f2267jb1793rHHMdh7969tLe3z/ZwhBBCCCGEEGLOkdx0ZRWpVLR9+3aef/55fvjDH3Ly5Em++MUvks/nefjhh6/p+u9973s3dP9oNIrP58Pn893QtwOPPPLIuMednZ1s3LiRcDhMIpHgsccew7KsGxqrEEIIIYQQ4oPpRnLTjWam6TQTuakie2Tvv/9++vv7+frXv04qlWLNmjW88sorl21knshLL73EE088cU33URSFQCCAz+dDVVUURSEYDBIOh6mtrcUwDIaHh8nlcliWheM4lMtlbNu+atlsgKeeesr73bZtNm7cSDKZ5MCBA/T09LB582Z8Ph87d+68pvEKIYQQQgghxJjrzU1TyUyzYSZy06y337lR69atY/Xq1Tz//POTnqOqKuFwmFgsRjgcxnEcXNdFVVUaGxsZHh7G7/fjOA6ZTAbXdb2Z2XK5jOM4FAoFisXiFb8ZuLS57549e7j33nvp7u72/mPt2rWLHTt20N/fj9/vn8ZPQQghhBBCCCEmdmlmWs+nK7ZH1nJNXuPlGclN86oJqmEYvPnmm6xfv37ScyKRCMlkkvr6eurq6giFQpRKJQKBgLdZOpfLkc1m0TSNQCCAZVkUCgXy+TymaRIKhaiqqmLBggWEw+FJlx8XCgXv94MHD7Jy5cpx347cfffdZDIZjh8/Pm2fgRBCCCGEEEJM5loy02ybidw0r4LsWC+lRCJx2XOKolBfX09LSwsLFiygoaEBwzDo6enxmgGPjIyQy+VQFIV4PI7f7ycSiRAKhWhpafH2zqqqiqqq3uvE4/EJx7Nlyxbv91QqNWGPp7HnhBBCCCGEEGKmXSkzVcpM5KZ5FWSvZMGCBSQSCcLhMJZlYds22WwWRVEYGRlBURTC4TDNzc0kEgkURcG2baqrq4nFYrS2thIOh9F1nWKxSDAYJBKJ0NbWRmNjIzU1NZfdc/fu3XR0dFTg3QohhBBCCCHE/DATuWleBdmxXkp9fX3jjsfjccLhMACZTIbu7m5vZrW6uprbb7+dWCxGqVQilUpx8eJFRkZG0DSNdDpNf38/b7/9NiMjI6iqSigUwjAMUqkU3d3dhMNh4vE4kUjksjGdPn0agGQyOWGPp7HnhBBCCCGEEGKmTZaZKm26c9O8CrJjvZT27dvnHQsGg1RVVREIBBgaGqKrq4vh4WF6enoIhUJYlsX58+cBaGpqIhgMAqMFofr7++nq6mJkZASAuro6r8pxJBLxZmdzuRyxWIzq6mp0fXyh58bGRgDa29s5evTouP8wr776KlVVVSxfvnwmPxYhhBBCCCGEACbOTHPBdOemeRVkYbSX0g9+8APvcTweR9M0crkchmFgGAYwuqG4qqrKOzb2fCAQYMGCBaiqimmauK6LpmlEo1Gi0Si1tbUkk0mi0Shnz57FsiwymQx9fX0EAgGv2hbAHXfcwapVqwDYsGEDy5cv58EHH+Tw4cP8+te/5sknn2Tr1q0EAoFZ/YyEEEIIIYQQH1zvzUyVNhO5qSJ9ZG/E/fffT2dnJ1/96le9PrGO42DbNqVSyTtPURRKpRI+n8/rDTsyMkJ9fT3xeJz6+nqy2SyBQIBYLOZVMM5kMpimSW1trdeyR1VVSqUSiqIQCoVQFAXXdXnppZe8+2maxu7du/niF79Ie3s7kUiEhx56aFzPJCGEEEIIIYSYaZdmprlgJnLTvOsjC6P7YOPxOMFgkObmZoLBIKVSic7OTkzTRFEUPvrRj1JVVUUqlcJ1XbLZLNFolJqaGjRNo1wu09jYyODgIMFgkGAwSKFQQNM0wuEwnZ2d9PT0EAwGMU0TAF3XURSF3t5eyuXyuH5IQgghhBBCCDFXjGWmudZHdrrMu6XFlwoGgyiKQnV1NZFIBNu2AbjppptQVRVd11m1ahWJRIKqqiqCwSAf/vCH+eu//msURaGrqwufz8fAwAAHDx7Etm1qamro6elhZGSE1tZWb69sLpdjZGQE13WvuUmvEEIIIYQQQsxFWl0t6upb0dsWgapVejhTNu+WFl/K7/fT2NiIbdveeupAIMD58+c5f/48sViMWCxGc3MziqJw8uRJ/H4/g4ODLFu2jEKhwLvvvovjOASDQcrlMvl8nqamJqqrqymVSvT19aEoCpqmkc/nsW0bRVEq/M6FEEIIIYQQ4vqoKz7E2b+pxYw5BAZq0IvN1J408P/6j5Ue2jWb10FW0zR6enpIJBLE43GqqqowTZNyuUxVVRWFQoF0Os3Q0BAf+chHcByHQ4cOMTw8zGc/+1ksyyKfz3vLjh3HIZ/PA9DX14dlWcRiMYaHh9E0jaqqKjRNQ9Pm3zcWQgghhBBCCIGq0fOXtRhVDq4Gt3/6KB+Pv0uvGeeV0CcI/eMbk18aDmN9dBmK7aK/3Yk9PDyLAx9vXgfZUqmEqqp0dHSwZMkSVq9ezenTp71wCuC6LrlcjrNnz/KhD32Iuro6mpqaeOeddygUCvh8PgKBAKqq8vvf/95rr1NbWwuAYRhomkapVCIej2NZlszICiGEEEIIIeYnxyZ2wSazDP6HdYf535t+S0DxASm+/2/bWfKPk1+qNizg3F+HcHwuwYFbWfz9DqxU7+QXzKB5vUfWtm0cx6Guro5jx45RLBapqqpi2bJlwGiIHVMoFHj99dc5ffo0CxYs4I477uATn/gEf/rTnzh27BipVMqrblwsFr1lxPl8Htd1cRzHC7A+X2U2SwshhBBCCCHEjYq+cpRAn3ZJiB21orkHNRic9LrSTfW4mgsKlOod0h9fPAujndi8DrKGYaCqKul0GtM0uXDhAtls1munc6mhoSEMwyAej/PWW29x9OhR/umf/gnLshgcHPReK5fLeQWkyuUyuq5jmiaBQIBisThu+bEQQgghhBBCzDdOocDil4c58y/dWcZ8rumfUWuqJ71Oz5toZQXFAT2vEO4pz/BIJzevlxYbhoHf72d4eJj6+nrC4TClUol0Ok1zczMXL17EsixCoRC2bWMYBgMDAwwMDPDHP45uZA6Hw8BoBeSPfexjdHV1kUwmKRaLqKpKoVBA13UvGLuuO65frRBCCCGEEELMN+7xd/k3L/0v7P13z9KgBfjeyFK+/582kuj9/eQX/e4IS881YDfWo6UGsXpSszfg95jXQdZxHMrlMj6fj0wmQ6FQoLq6mng8TjgcJp1OMzIyQjAYxHVdr5WO4zgkk0lUVaW3txdN0+jq6kJRFK/wUywWI5PJUC6XKZfLuK47LtAKIYQQQgghxHzlWhZL/p9/4D/s3kauNUDtvk4SFw9c9Tor1QupXqxZGOOVzOsgGw6Hyefz1NfXe8uD+/r6SKfT1NXVUS6PTnVnMhkURcHv91MsFr29tblcztv7mk6nvde0bZtz586hKAqqqqJpGpY1+qcaGRlBVef1imwhhBBCCCGEwLUs1N++RRVUPJhO1bwOsoZhUCwWKRaL1NTU4DgOtm1jWRYjIyMkk0kuXLiAaZrouk6xWMR1XRRFoVgsYhgGAIqioCgKoVCI5cuXk06nveALo0WlSqUSuVzOm5kVQgghhBBCCFEZ8zqRBQIBXNfF7/eTzWZRFAVd1/H7/QSDQRRFYenSpQwPD+Pz+bAsi4GBAZLJJE1NTZw8eRLLsli8eDG2bXt7bMde2zAMbNtmaGgI13UJBoPouo6u6wxXsGeSEEIIIYQQQnyQzesgO1Y9uFQq4ff7CYVCXt/YQCBAoVDAcRxqa2sJBoNomkZrayuxWIxAIMAnPvEJSqUShUKBgYEBhoaG8Pl8GIbB0NCQN4MbiUTw+/0UCgVvVlYIIYQQQgghRGVMabPnM888w9q1a4nFYiQSCTZt2sSpU6fGnbN+/Xpvqe7Yzxe+8IVx53R2drJx40bC4TCJRILHHnvM24N6PcYqCY+MjFAqlbziT8Vikb6+Ps6fP8/p06d5++23effddzl06BB79+5l//79/OlPf+Kdd96hp6eHvr4+urq66O3txbZtotEokUiEcrnM4OAgxWLxuscohBBCCCGEeP+bq5np/WZKM7L79u1j69atrF27FsuyeOKJJ9iwYQMnTpwgEol4523ZsoWnnnrKezzW4gZG95tu3LiRZDLJgQMH6OnpYfPmzfh8Pnbu3Hldb0LTNDRNwzRNSqUSpVIJVVXx+XyEw2FCoZC3H9Z1XSzLIhaLAaP7bMeqEYdCISzL8nrFZjIZb/ZV0zR8Ph+2bWO+p9+SEEIIIYQQQsDczUzvN4p7A+tk+/v7SSQS7Nu3j7vuugsY/XZhzZo1PPfccxNes2fPHu699166u7tpaGgAYNeuXezYsYP+/n6vwNKVZDIZ4vH4uGOqqnrXuq6LaZo4juM9f2kFYlVVvcrDjuPgOA6WZeG67rhlw2Pna5rmFZG69Pl0Ok1VVdU1fFJCCCGEEEKID6JKZ6b1fBpd8U3b+5kKyzV5jZdnJDfdUB+ZsZY1tbW1447/+Mc/pr6+nhUrVvD4449TKBS85w4ePMjKlSu9PwjA3XffTSaT4fjx4xPep1wuk8lkxv28l+M43mwsjH6jEYvFiEaj+P1+VFX1Au7YvthCoUCpVPJmWMdmcQOBAMFg0CsQNXaO7I0VQgghhBBCTMVcykzvJ9dd7MlxHB555BHuvPNOVqxY4R3/zGc+w6JFi2hqauLIkSPs2LGDU6dO8Ytf/AKAVCo17g8CeI9TqdSE93rmmWf45je/ec1jK5fLXg/ZsdlXn8+Hz+dDVVVs2/am9XO5HDA6fT/WX/Zalw5LsBVCCCGEEEJMZi5kJgsTKhRbLEZz1UzkpusOslu3buXYsWPs379/3PHPf/7z3u8rV66ksbGRT37yk3R0dLBkyZLrutfjjz/O9u3bvcdnz55lzZo113TtpUuHx2Zr4c8B9kZks9nLljgLIYQQQgghBMyNzLSfX13f4KfRTOSm6wqyX/7yl9m9ezevv/46LS0tVzx33bp1AJw+fZolS5aQTCZ54403xp3T29sLQDKZnPA1AoEAgUDAe7xo0SJgtJLXbAfJTCZDa2srJ06coKmpaVbvLYQQQgghhJgfPsiZCWY+N00pyLquy7Zt2/jlL3/Ja6+9Rltb21WvOXToEACNjY0AtLe38/TTT/Ptb3+bXbt2kUqlaGxsJBKJsHz58msax1ihpng8XrFiS83Nzd44hBBCCCGEEAKmNzP19fXx05/+lGeffZaLFy+iqir5fP6axjEXMhPMXG6aUtXiL33pS7z44ou8/PLL3HLLLd7xeDxOKBSio6ODF198kXvuuYe6ujqOHDnCo48+SktLC/v27QNG96K2tbVx4cIFvvGNb9DY2MhXvvIVAM6fP08ikbjqOMYqcFWianAl7y2EEEIIIYSY26YrM61ZswZVVTl58iTbtm3jhRdeYNGiRZw7d45Tp05dNTdVOrfM9P2nFGQVRZnw+AsvvMDnPvc5urq6eOCBBzh27Bj5fJ7W1lbuu+8+nnzyyXGDX7NmDcPDw/T39xOJRNi8eTM/+clP2LZtG1/72teuOg4JskIIIYQQQoi5aLoy0/nz51m9ejW5XI6amhoeeughdu7cSVtb2zXlpkrnlpm+/5SXFl9Ja2ur9y3CZAzD4NixY/zsZz9j06ZN3vGBgQEOHjx4TePw+Xw8+uij44o3zZZyucyOHTsYGBggGo3K8mIhhBBCCCGEZzoyE4wuM87lcpflpk996lPXlJsqmZlg5nPTlGZkp0N3dzfNzc0cOHCA9vZ27/hXv/pV9u3bx+9///vLrrm0nQ7AxYsXr3k/7Uzq6uq66sZtIYQQQgghhJiqqeamuZqZYGZy03W335lNU+0jO1tisVilhyCEEEIIIYQQk2amj3MPOr4KjGi0j+x+fjUjuWnW18XW19ejaZpXPnpMb2/vpKWkH3/8cdLptPfT1dU1G0O9qsnWvwshhBBCCCHEjZhqbposM+n40JUK/fxLgJ6J3DTrQdbv93Pbbbexd+9e75jjOOzdu3fclPmlAoEAVVVV436EEEIIIYQQ4v1qqrnpg5aZKrK0ePv27Tz00EN87GMf4/bbb+e5554jn8/z8MMPV2I4QgghhBBCCDHnSG6aXEVK7t5///185zvf4etf/zpr1qzh0KFDvPLKKzQ0NFzT9d/73vdu6P7BYJBwOExtba1XPUvX9SlPeT/yyCPjHnd2drJx40bC4TCJRILHHnsMy7JuaKxCCCGEEEKID6YbyU03mpmm00zkplmvWnyjXnrpJR588EFM07zquYqi4PP5UBSFYDDo/ev3+/H5fJRKJSzLolAoAKONh8vlMrZtX9NYLq2+Nda0OJlM8uyzz9LT08PmzZvZsmULO3fuvP43LIQQQgghhBBTcGlmWs+n0ZUKFXtyTV7j5RnJTfMuyK5bt47Vq1fz/PPPT3qOqqqEw2EikQiBQAD4cz+nUCiEruv4/X4cx6FUKmEYBqqq4jgOhUIBy7IolUpXDbWXNvfds2cP9957L93d3d43JLt27WLHjh309/fj9/un6yMQQgghhBBCiEldmpnmQpCdidxUkaXF18swDN58803Wr18/6TnBYJCWlhaSySQLFizAsizy+TymaaLro1uCs9kspVIJ13WxbRvTNCkUCmQyGQAikQjV1dXU19dfcZP02EwuwMGDB1m5cuW4af67776bTCbD8ePHb/CdCyGEEEIIIcTVXUtmmm0zkZvmVZAdGBjAtm0SicRlzymKQk1NDS0tLcRiMWpqajAMg0KhgN/vp7GxERhtFKxpGq7rEovFCAQCfOQjH6GlpYV4PI7P58NxHHw+H4lEgurqaqLR6ITj2bJli/d7KpW6bK362ONUKjVdH4EQQgghhBBCTOpKmalSZiI3zasgOxlFUViwYAENDQ3U1NQQDocZGBggnU7jOA7Dw8MMDAwQj8e56aabSCQS2LaNqqq0tbVhGAbNzc3AaElrwzDw+/1UV1ezbNkyGhoaJgyzu3fvpqOjY7bfrhBCCCGEEELMGzORm+ZVkB1rCtzX1zfueHV1NZFIhGKxiGma3v5YTdOora1l7dq1BINB+vv76erq4uLFiySTSQzD4NSpU7zzzjscPXqUYrGIpmlEo1GKxSJnzpzh4sWL1NXVUVtbSzgcvmxMp0+fBiCZTE7YrHjsOSGEEEIIIYSYaZNlpkqb7tw0r4LsWFPgffv2jTsWiUQoFAo4jsPZs2fZv38/0WjUq0J89uxZHMehrq4OwzAwDIN8Pk9fXx+FQoFsNksikWDFihW0tbURjUYJBALU1dWRzWbp6+tD13Xi8bi3z3bM2JLl9vZ2jh49Ou4/zKuvvkpVVRXLly+fnQ9ICCGEEEII8YE2UWaaC6Y7N82rIAujTYF/8IMfeI+rq6tRVZXq6mqKxSLpdBrbtsnlckQiEUqlEoVCgXQ6jaqq+P1+4vE4w8PDOI6DpmnEYjGvh2w0GvX2yHZ2duLz+byeRtFolLq6Ou/ed9xxB6tWrQJgw4YNLF++nAcffJDDhw/z61//mieffJKtW7d6lZOFEEIIIYQQYqa9NzNV2kzkpnkXZO+//36+9a1vAaN7Y8PhMIFAwGudM2asvY5lWV5I7enpAUYrG7e2ttLY2MiyZctobGwkFosRj8exbZumpiai0agXih3HIZ/PY1kWmqZ593jppZe83zVNY/fu3WiaRnt7Ow888ACbN2/mqaeemo2PRQghhBBCCCGA8ZlpLpiJ3DTv+sgCZDIZ4vE40WiUxsZGdF0nl8vR09ODZVlUV1dz6623EgqFuHDhAj6fz2utU11dTSgUwrIs2trayOVywOgHGgwGSaVSOI7D4OAgPT09VFdXY1kWjuPgui5+v5/+/n4MwxjXD0kIIYQQQggh5oqxzDTX+shOF/3qp8xdfr8f13WJRCJkMhkcxyEQCHDTTTfR3d1NPB5nwYIFOI5DqVRCVVVuv/12wuEw+/fvZ3h4mEwmw8jICNlslr/4i7+gra2N2tpazpw5QzKZZGhoiGKxSH9/P7ZtEwqFCAQCGIZR6bcvhBBCCCGEEFOm6DqsvIX0rTECwzah3xzFKZUqPawpmddBFkDXdYLBIPF4nN7eXkzT5NChQyiKQnd3NzU1NaxatYqqqioOHz6M3+8nkUiwZMkSLMvyehWFQiFgdGa2v7+fYrFIX18fhmFgmiaqqmKaJpZlMQ8nsYUQQgghhBACgMK9H6X7Tg3X57J2bQfqkyHO/cMaYj/5XaWHds3mdZANhUKYpkmxWMR1XVpaWrxKxGOFnvr6+njzzTdZv349IyMjvPvuu6TTaW6//XYKhQLDw8OUSiVM0+TNN99EURTq6uro7+8nm816r+P3+6mrq8OyLEKhkLckWQghhBBCCCHmDVVjZImOqzsoiRL/eeFuarQw/9dTf+KFtzfiHDox6aV62yKyqxtQTZfIm51Yqd5Jz51p867Y06XK5TLlcpnOzk7S6TR1dXUsWLAAVVXJ5/PYtg3A8PAwZ86cobW1lZtvvpmamhrOnDnDyMgIuq57lYrPnDlDNpvl0KFDlEolfD4f6XQa13VJp9MUi0XK5TI+X2XWmAshhBBCCCHEDXFsat82cQIOj3/kFWq0MAD/Nprm9L+LX/HS3Icb6P7XKqnbfZzdsgR98cLZGPGE5nWQtW0b27aJRCLk83lGRkaIRCKsWbPGq1Q8pre3l9/97necPXuW5cuX85GPfISVK1eSz+f5/e9/Py70lkolSqUSlmVhmiaGYaAoCj6fD8dxZDZWCCGEEEIIMW8Ff/0WtYc07o+dG3c8cHMG3pOjLhXuyoILdsilXOMw1N40wyOd3LxeWmyaJqFQCMdxvJ+BgQGamprQNM3r/wp4e2EXLVrEb37zG/bu3UsikaBUKpHL5SiXy8TjcTKZDOFwmGg0Sjabpaqqimw2SygUIp1Oo+u67JEVQgghhBBCzFuuZZH4/QjnLZcP+/983DQ1uELWUboHCPfUUEy4BIZVao4MYs/CeCcyr4NssViktraWbDZLLBYDIBAIkMlkaGtro7Oz01sKbJomMNpLNhAIMDw8TFVVFY7jAGAYBkuXLiWfz3uFo0KhkNdyx7ZtL8AWi8XKvGEhhBBCCCGEmAbu8Xf5t//n/8Lf/4fvc0dgiP9w9tO0fdvmSlN2dn8/zf8pi7qgHjebxR5Jz9p432teB1nbtrEsC03TKBQKlEolNE0jFApRX19PKpWiXC6jaRqKohCPx8lms0SjUaqqqigWiwwODqKqKj09PeTzeYaHh7n55puJxWIoisLIyIgXglV1Xq/EFkIIIYQQQghgdFa25ZkD/Kefb+R/a60m8OZp3JHjV73OKZVwui7MwgivbF4H2WAwSD6fJ5lM0t/fj2VZWJbF4OAgtm17RZnK5TIA6XQa0zTp6+ujpqaGwcFBLMvCcRzK5TIDAwPEYjFKpRLZbBbDMDAMA1VV0XUdVVUZHh6WQCuEEEIIIYR4X7Df6UB/h4otEb5e8zrI2rZNJpOhVCoRjUYJBoNeAajh4WFqa2spFovYtu0VbRpTKpXGPVYUhWg0SmtrK0NDQ16Bp2g0iq7rFAoFBgYGcBwHXZ/XH5sQQgghhBBCzGvzOpHpuk4wGETTNMrlMo7j4Pf7CYVCaJqGaZrcdNNNZDIZL7SOjIywcOFCkskkx48fp1wus2TJEhRFQdM0crkcgUCASCRCoVDAdV1SqRSWZREIBPD5fCiKQjpdufXgQgghhBBCCPFBNq+D7FjRJUVRCIfDxGIxTNNkeHiYeDyOYRg4jkMgEKC2thafz0dLSwu1tbXous6dd95JOp0ml8thGAaZTMardJzL5RgeHkZRFCKRCIqiUC6XyWazUrVYCCGEEEIIISpoSps9n3nmGdauXUssFiORSLBp0yZOnTo17pz169ejKMq4ny984Qvjzuns7GTjxo2Ew2ESiQSPPfbYuFY5U+W6Lvl8nr6+PgqFAsFgkGKxSLFYZGRkhIsXL3Lu3DnefvttTp06xbFjx3j99dd5/fXXOXXqFD09PVy8eJHe3l5SqRS9vb0UCgWi0SixWIxyuczIyAjFYlFCrBBCCCGEEGJSczUzvd9MaUZ23759bN26lbVr12JZFk888QQbNmzgxIkTRCIR77wtW7bw1FNPeY/D4bD3u23bbNy4kWQyyYEDB+jp6WHz5s34fD527tx5XW9C0zQAHMehVCpRKpW8Ak1jPWHH/uiWZZHL5bwlyfl8Hp/Ph67rXpuesSJPlwbXsddzHEf+AwkhhBBCCCEmNFcz0/uN4t7AFGN/fz+JRIJ9+/Zx1113AaPfLqxZs4bnnntuwmv27NnDvffeS3d3Nw0NDQDs2rWLHTt20N/fj9/vn/C6S2UyGeLx+Pg3oijouo6iKNi2jeM4l82eapqGruu4roumaaiq6p070TWXVit2HAfTNMc9n06nqaqquqbPSgghhBBCCPHBU+nMtJ5Poyu+aXs/U2G5Jq/x8ozkphvqIzNW8Ki2tnbc8R//+MfU19ezYsUKHn/8cQqFgvfcwYMHWblypfcHAbj77rvJZDIcPz5x36JyuUwmkxn3816u63qzqWNFn2KxGKFQiEAggKZpuK47brY1n89TKpW8gKqqKoFAgGAwSDgcRtM0LMvyKhzLsmIhhBBCCCHEVMylzPR+ct3FnhzH4ZFHHuHOO+9kxYoV3vHPfOYzLFq0iKamJo4cOcKOHTs4deoUv/jFLwBIpVLj/iCA9ziVSk14r2eeeYZvfvOb1zw213Upl8uUy2VvplbXdfx+vzcjG4/HsSyL4eHhcSF3rH3PtYRWCbZCCCGEEEKIycyFzGRhQoVii4UJzExuuu4gu3XrVo4dO8b+/fvHHf/85z/v/b5y5UoaGxv55Cc/SUdHB0uWLLmuez3++ONs377de3z27FnWrFlzTdeOzdTC6LcUY0ZGRq5rLJfKZrOXLXEWQgghhBBCCJgbmWk/v7q+wU+jmchN1xVkv/zlL7N7925ef/11WlparnjuunXrADh9+jRLliwhmUzyxhtvjDunt7cXgGQyOeFrBAIBAoGA93jRokXAaCWv2Q6SmUyG1tZWTpw4QVNT06zeWwghhBBCCDE/fJAzE8x8bppSkHVdl23btvHLX/6S1157jba2tqtec+jQIQAaGxsBaG9v5+mnn+bb3/42u3btIpVK0djYSCQSYfny5dc0DlUd3dobj8crVmypubnZG4cQQgghhBBCwPRmpr6+Pn7605/y7LPPcvHiRVRVJZ/PX9M45kJmgpnLTVOqWvylL32JF198kZdffplbbrnFOx6PxwmFQnR0dPDiiy9yzz33UFdXx5EjR3j00UdpaWlh3759wGgp6ba2Ni5cuMA3vvENGhsb+cpXvgLA+fPnSSQSVx3HWAWuSlQNruS9hRBCCCGEEHPbdGWmNWvWoKoqJ0+eZNu2bbzwwgssWrSIc+fOcerUqavmpkrnlpm+/5SCrKIoEx5/4YUX+NznPkdXVxcPPPAAx44dI5/P09rayn333ceTTz45bvBr1qxheHiY/v5+IpEImzdv5ic/+Qnbtm3ja1/72lXHIUFWCCGEEEIIMRdNV2Y6f/48q1evJpfLUVNTw0MPPcTOnTtpa2u7ptxU6dwy0/ef8tLiK2ltbfW+RZiMYRgcO3aMn/3sZ2zatMk7PjAwwMGDBye8ZqwC8Zhisci2bdsolUrXPvhpUi6X2bFjBwMDA0SjUVleLIQQQgghhPBMR2aC0WXGuVzustz0qU99asLcNJcy09h4ZjI3XXfV4us1MDCAbdsTlpN+++23J7xmslLS//AP/zAjY7wWf/d3f0dXV9dVN24LIYQQQgghxFRNNTfNxcwEM5ebZj3IXo/3lpJOp9MsXLiwgiMaFYvFKj0EIYQQQgghhJg0M32ce9DxVWRMFib7+dWM5KZZD7L19fVomuaVjx7T29t7zaWk54rJ1r8LIYQQQgghxI2Yam6aLDPp+NCVygRZ/mWV9Uzkplnf4On3+7ntttvYu3evd8xxHPbu3Ut7e/tsD0cIIYQQQggh5hzJTVdWkaXF27dv56GHHuJjH/sYt99+O8899xz5fJ6HH354Vu7v9/sJBAJomkYmk8FxHDRNw3Gcq27OFkIIIYQQQojZUOncNJdVpOTu/fffz3e+8x2+/vWvs2bNGg4dOsQrr7xy2UbmyXzve9+75ntpmkYgECAej1NXV0ddXR319fVUVVURCoVIJBLE43GCwSC6rk9p2vuRRx4Z97izs5ONGzcSDodJJBI89thjWJZ1za8nhBBCCCGEEGNuJDdNJTPNtJnITVPqIzsXvPTSSzz44IOYpjnpOYqiEAwGicVi+P1+75jrumiaRiwWIxwOUywWyWaz3vOWZVEoFLBtm1KpdNVS1ZdW3xprWpxMJnn22Wfp6elh8+bNbNmyhZ07d07TuxdCCCGEEEKIK7s0M63n0xXbI2u5Jq/x8ozkpnkXZNetW8fq1at5/vnnJ3w+EAhQXV1NMBgkEAiQTqcxTRNVVQmHw/h8PkqlEtXV1biuS7FYpFwu4zgOpmni8/nw+/0YhkG5XCaXy00ami9t7rtnzx7uvfdeuru7vW9Idu3axY4dO+jv7/cCtRBCCCGEEELMpEsz01wIsjORmyqytPh6GYbBm2++yfr16yd8PhaL0dLSQk1NDY2Njd6+11AoxE033UR1dTWFQoFwOEx9fT1+v5/GxkZaW1u56aabqK2tJRqNentmL12GPFED30Kh4P1+8OBBVq5cOW6a/+677yaTyXD8+PFp/yyEEEIIIYQQ4r2ulpkqYSZy07wKsmNNgROJxGXPVVdX09DQQDwex+/3093dzfDwMD6fD03T0DSNm2++mRUrVrBw4UKSySR1dXUEAgEaGxu9WdlcLkepVMLv91NfX88tt9zCggULvG8QLrVlyxbv91QqNWGz4rHnhBBCCCGEEGKmXSkzVcpM5KaKVC2ebvF4nEgkgqZp5HI5otEowWAQVVXRdZ0VK1Zw/PhxLl68SCwWQ1EUTNOkp6eHcrns7Z/1+/0sXLiQYrHIyMgI3d3dRKNRampqME0Ty7LI5XLefXfv3k1HRwdLliyp4LsXQgghhBBCiLlrJnLTvJqRHWsK3NfX5x3z+/1EIhFyuRyGYTA4OEhfXx+1tbWYpkmhUOBPf/oTtm0TCAQYHBwkl8uhqiqFQoFoNEqpVCKfz7N+/XpWrVrF2rVrWbx4Mc3NzWSzWfr6+rBtm+rqanR9fPY/ffo0AMlkcsJmxWPPCSGEEEIIIcRMmygzzQXTnZvmVZAdawq8b98+79jYHyocDlMulxkcHGRwcJDa2lo0TSOfz5NOp8lms+i6jq7rlMtlOjo6UBQFTdNYtmwZbW1tnDt3jv7+fk6ePEm5XPb20zqOQ01NDaFQiNra2nFjamxsBKC9vZ2jR4+O+w/z6quvUlVVxfLly2fnAxJCCCGEEEJ8oE2UmeaC6c5N825p8fbt29m8eTOA10rH5/ORTqcZHBwEQFVVhoeH0TQNwzCIx+O4rsvQ0BChUIhQKERNTQ2qquLz+aivr6empgZFUXjrrbdQVZVsNsvp06dpbm7GdV0GBgYIh8OEQiFvKfIdd9zBqlWrANiwYQPLly/nwQcf5O///u9JpVI8+eSTbN26lUAgULHPSwghhBBCCPHBcmlmmgtmIjfNqxlZGG0K/K1vfQuAYDCI4zjEYjEALMtCURQWLlxIOp1m8eLFfOhDH2Lx4sWEQiFUVSUWixEMBunt7UXXdQzDQFEU3n33Xbq6umhsbKShoYFyuQxAqVTy2u8UCgWvRy2M9mcao2kau3fvRtM02tvbeeCBB9i8eTNPPfXUbH48QgghhBBCiA+4SzPTFakaKMqMj2cmctO86yMLkMlkiMfj1NfXU19fT7lcplQqMTAwgN/vZ8GCBQwMDLB48WJWr17NhQsX6OvrwzAMFixYgKZpZDIZotEomUyGTCYDwK233uoF21OnThEKhQiHw2SzWXK5HIVCgZaWFnp6eshms+P6IQkhhBBCCCHEXDGWmSbqI6vGYuQ+tZxUu4riwNJvn8AeSU/7GCbqIztd5t2M7KV0XcdxHG699Vb8fj+aplEsFjl37hz5fJ6TJ0/yyiuvoKoqzc3NdHd387vf/Y7Dhw9z880309TUhG3bBINBgsEgmqah6zqFQoFbbrmF6upqVFWlVCrhuq73u6ZplX7rQgghhBBCCHFd+v7dCmJ/28XBf/cdDj3w/6b1/2dQuG9dpYc1JfM6yDqOQ7lcpru7G4Bly5YRDoeB0X2ytm0zODjIoUOHCIfDNDY2EgwGCYfDxONxFi5cSGNjI8lkktraWk6cOMGZM2dwHIeBgQEuXLjA0NAQpmnS0NBAU1MTuq5TU1NTybcthBBCCCGEENdH1VD/zSD/bdlu6rUIYdXP/9lykE/9r79Fu0rO0W9aTObf/Suy//O/Ql/UOksDnti8DrKu6+I4Dh0dHWSzWcrlMgsXLiQSieA4jndeLpejp6eHaDTKggULAPjhD3/ID37wA4aGhvD5fGQyGbq7u1FVlZMnT5JOp/H7/d6+2O7ubsrlMuVyedxrCyGEEEIIIcS84djoP67lnwrRcYe/WPsHsuuXXfHS7KoE/R+D3tuh49+3oi2bvr6wUzWvg6yiKBiGQSQSoVgsentdb7vtNlT1z2/NNE0ymQwnT56kWCyydOlSHMdheHiYw4cP89vf/pZAIICmafT09Hj7YQ3DwDRNSqUSuVwO27YxDIOhoaFKvWUhhBBCCCGEuCFV/+V3fOc/PsCwXfCOJbQIPR+/cuGn2B8uoJgKKGDGHIbWLpjpoU5qXgfZUqmEZVmoqoqqqui6zuDgIENDQ+OCLEBHRwemaRKLxaivr+df/at/RU1NDbFYDNM0yWaztLW1oWkaNTU11NbW4rou9fX12LZNPB4nk8lgWRa2bVfoHQshhBBCCCHEjYuczdBl/zkz2a5DpPPK8dDuGyDxpoN/WCXco1L7h/6ZHuak5nWQLRaLBINB8vk8NTU16LqO3+8nm81yyy23EI/HAYjH41iWBYwuMz579ixvvvkmfr+fRYsWoSgKiqJ4PWWXLl2KZVnU1tZi2zbRaBTXddE0jUAgIEFWCCGEEEIIMa85x97l3z/9KI/0fIy9RY2bX91C809OX/Ea1zSI/vT3LP5/Hab5/3gT+52OWRrt5fSK3XkamKaJoigEAgHy+TyO4+Dz+byZ1rHOQqZpous64XAYv9/PyMgIN998M8PDw4yMjKBpGn19fV5f2Wg0SnV1NUNDQ+Tzea+nrK7rWJYle2SFEEIIIYQQ85tjU/f8QU79JMa7tfdwc9chbOfaJuycfH6GB3d18zrIhkIh8vk8jY2NdHd34zgOhmEwMDBAuVwmGAySyWQoFEbXfo/toTVNE1VVGRkZwXVdLMsik8mgKApNTU3k83mKxSK5XA4Ybdrr8/nQNI3h4WE0TcM0zYq9byGEEEIIIYSYDk42i5PNVnoYUzavg6xlWYyMjFAqlYhEIvh8PlRVxbIsCoUC9fX1GIZBqVTCNE0cxyGTyaBpGgMDAxSLRQBvVrepqYlgMEhfXx+qqhIIBLwlx6VSiaGhIWzblj6yQgghhBBCCFFB8zrIKopCJBIhHA5TLBYxDMPrE6vrOoVCgUWLFnlFmhRFoa+vj8WLF9PU1MTx48cpl8u0tbURCoUol8tks1lCoZAXWMd6yo69tqZp6LrOyMhIpd++EEIIIYQQQnwgzesgaxgGhmFQKBQIh8PEYjEcxyGdThOLxbAsC9M0CYfD1NXV4fP5aGhoIBqNEggE+OhHP0pvby/FYpF0Oo1pmpTLZa/NTrFYxHEcIpEIoVCIUqlEPp/39t4KIYQQQgghhJh9U6pa/Mwzz7B27VpisRiJRIJNmzZx6tSpceesX7/eqwI89vOFL3xh3DmdnZ1s3LiRcDhMIpHgscce86oKXw/HccjlcgwODlIqlQgEApRKJQzDIJPJcPHiRc6cOUMqlaKzs5PDhw/zz//8z/z2t7/lxIkTdHd309PTQ19fH0NDQ16oDYVChMNhSqWSt4RZCCGEEEIIISYzVzPT+82UZmT37dvH1q1bWbt2LZZl8cQTT7BhwwZOnDhBJBLxztuyZQtPPfWU9zgcDnu/27bNxo0bSSaTHDhwgJ6eHjZv3ozP52Pnzp3X9SbG9qy6rkuhUKBQKHh9ZYPBIJFIBEVRKBaLmKaJZVlEo1Fs26ZYLKKqKsFgENd1cV0XwzC82dmx2dexJcWO40ihJyGEEEIIIcSE5mpmer9R3BtYJ9vf308ikWDfvn3cddddwOi3C2vWrOG5556b8Jo9e/Zw77330t3dTUNDAwC7du1ix44d9Pf34/f7r3rfTCbj9Yj13oiioOs6qqriOA6WZY1bAqwoCqqqoqoqiqJ4+1/HzpmorY6maeMC7KXBFiCdTlNVVXX1D0oIIYQQQgjxgVTpzLSeT6Mrvml7P1NhuSav8fKM5KYpLS1+r3Q6DUBtbe244z/+8Y+pr69nxYoVPP744177G4CDBw+ycuVK7w8CcPfdd5PJZDh+/Ph1j8V13XF7XP1+P+FwmEgkgt/vR9M0r9XO2P7Xcrnszb6OVSf2+/3eLG4gEMC2bQqFAqVSSfbGCiGEEEIIIaZkLmWm95PrLvbkOA6PPPIId955JytWrPCOf+Yzn2HRokU0NTVx5MgRduzYwalTp/jFL34BQCqVGvcHAbzHqVRqwnuVy2XK5bL3eOw/w5XGNnb+2CxsIBDwZmPHqh27ruvtezUMA9u2vaB7LSTYCiGEEEIIISYzFzKThQkVii0Wo1syZyI3XXeQ3bp1K8eOHWP//v3jjn/+85/3fl+5ciWNjY188pOfpKOjgyVLllzXvZ555hm++c1vXte1juN4S40vdbUwfC2y2exlS5yFEEIIIYQQAuZGZtrPr67r9abTTOSm6wqyX/7yl9m9ezevv/46LS0tVzx33bp1AJw+fZolS5aQTCZ54403xp3T29sLQDKZnPA1Hn/8cbZv3+49HhkZYdGiRXR2ds56kMxkMrS2tnLixAmamppm9d5CCCGEEEKI+eGDnJlg5nPTlIKs67ps27aNX/7yl7z22mu0tbVd9ZpDhw4B0NjYCEB7eztPP/00fX19JBIJAF599VWqqqpYvnz5hK8RCAQIBAKXHY/H4xUrttTc3Iyq3tAWYyGEEEIIIcT7jGSm8WYqN00pyG7dupUXX3yRl19+mVgs5q3PjsfjhEIhOjo6ePHFF7nnnnuoq6vjyJEjPProo9x1112sWrUKgA0bNrB8+XI+8YlPkE6nGRgYwHVdPvvZz074wQshhBBCCCHEfDGdmenBBx/kox/9KN///vfp6+ujsbGRw4cPc/vtt1fyLc4JU2q/oyjKhMdfeOEFPve5z9HV1cUDDzzAsWPHyOfztLa2ct999/Hkk0+O+xbgu9/9Ln/7t3+LrutEIhFaW1vp6uri1KlT3jcOVzJWSroS7W8qeW8hhBBCCCHE3DZdmen8+fNs2rSJQ4cOEY1G+Zu/+Rs0TePnP//5NeWmSueWmb7/lJcWX0lrayv79u276uv86Ec/4ktf+hLf/e53gdGCTK2trXz/+9/na1/72lWvDwQCfOMb36jIDG4l7y2EEEIIIYSY26YrMy1atAi/38/WrVvH5aY9e/ZcU26qdG6Z6ftPaUZ2OhiGQTgc5mc/+xmbNm3yjj/00EOMjIzw8ssvX3bNe0tJO47D0NAQdXV1k37jMZNc1yWbzdLU1CT7ZIUQQgghhBDTbqq5aa5lJpjZ3HTd7Xeu18DAALZtT9gX6e23357wmhtpvzOTurq6rlqBTAghhBBCCCGmaqq5aa5mJpiZ3DTrQfZ6vLeUdDqdZuHChRUc0ahYLFbpIQghhBBCCCHEpJnp49yDjq8iY7Iw2c+vZiQ3zXqQra+vR9M0rw/SmN7e3kl7Ik1WSrrSKjVFL4QQQgghhHh/m2pumiwz6fjQlcoEWf5lE+tM5KZZ3+Dp9/u57bbb2Lt3r3fMcRz27t1Le3v7bA9HCCGEEEIIIeYcyU1XVpFKRdu3b+f555/nhz/8ISdPnuSLX/wi+Xyehx9++Jqu/973vndD96+qqsLv91NbW4vf77/u13nkkUfGPe7s7GTjxo2Ew2ESiQSPPfYYlmXd0FiFEEIIIYQQH0w3kptuNDNNp5nITRXZI3v//ffT39/P17/+dVKpFGvWrOGVV165bCPzRF566SWeeOKJa76Xpmn4/X78fj+BQADTNGlubqZcLhMOh7lw4QKmaWKaJrZt4ziO93M1Tz31lPe7bdts3LiRZDLJgQMH6OnpYfPmzfh8Pnbu3HnN4xVCCCGEEEIIuP7cNNXMNNNmIjfNevudG7Vu3TpWr17N888/P+k5qqoSCoUIhUIEg0ECgQCu66JpGqVSidraWgKBAIZhMDw8jKqqKIqC4ziUy2UKhQKFQgHTNK84lkub++7Zs4d7772X7u5u7z/Wrl272LFjB/39/Tc08yuEEEIIIYQQ1+rSzLSeT1dsj6zlmrzGyzOSm+ZVE1TDMHjzzTdZv379pOfouk59fT319fXU1dXhui7Dw8Ok02ny+Tx+v5+BgQHK5TKlUglFUSgWi+RyOXK5HADV1dXU1dVRX19/xSJThULB+/3gwYOsXLly3Lcjd999N5lMhuPHj9/4mxdCCCGEEEKIq7iWzDTbZiI3zasgO9ZLKZFITPh8LBajtbWVRCJBLBZD13WKxSKhUIibbrqJuro6LMsiFouRy+VYsGABjY2NVFdXU11dTUNDA8FgEEVRCIVCXqCNRqMTVtrasmWL93sqlZqwx9PYc0IIIYQQQggx066WmSphJnLTvAqyV1JXV0dDQwN1dXWoqsrIyAi9vb34fD5c1yUej9Pc3MzSpUuprq6mpqaGSCTCqlWr0DQNx3GwLAvbtnFdF9d1WbBgAUuXLvVmZ99r9+7ddHR0VODdCiGEEEIIIcT8MBO5aV4F2bFeSn19feOOx+NxwuEwgUCAXC5HqVQCIBKJUF1dzeLFi+nv76ejo4NUKkWhUCCTyXDo0CH27NlDPp/HdV1KpRKO43hBNpVK0dvbS319PX6/n1AodNmYTp8+DUAymZywx9PYc0IIIYQQQggx0ybLTJU23blpXgXZsV5K+/bt847puk4kEmFkZISRkREymQxVVVXEYjFM06RcLtPR0cHQ0BCWZTE4OEipVPIKPGmaRn19PalUiqGhIfr7+0mn0yxYsIBly5ZRLpcZGBjAdV2qq6vx+cZvlG5sbASgvb2do0ePjvsP8+qrr1JVVcXy5ctn5wMSQgghhBBCfKBNlJnmgunOTRVpv3Mjtm/fzubNm73H1dXVWJaF4zhomsaFCxcIBAK0tLTQ399PNpvF7/ejaRq6ruO6Lvl8HlVV8fv9qKpKPp9nyZIlhEIhkskkuq6j6zrDw8NUV1czMDBAqVQiGo1SVVXF4OAgAHfccQerVq0CYMOGDSxfvpwHH3yQv//7vyeVSvHkk0+ydevWKxaMEkIIIYQQQojp9N7MVGkzkZvmXZC9//776ezs5Ktf/SqaphGJRLBtm2AwSCaTwXEcqqqqvBBaKBRQVRXLsjAMg0AgQDwep7q6Gtu2qa2tZWRkhOrqajKZDJlMBlVV6e/v5/Tp0yxevBhFUVBVFZ/PRzQaZWhoCNd1eemll7xxaZrG7t27+eIXv0h7ezuRSISHHnpoXM8kIYQQQgghhJhpl2amuWAmctO86yMLkMlkiMfjxGIxFixYQCqVoqqqyguYt912G7lcjkWLFlEul+ns7CSXy6GqKi0tLUQiEbq7uymXyyxdupS+vj78fj+LFi1CURSy2SxHjhyht7eXpqYmTNPENE00TcPn89Hb24tpmuP6IQkhhBBCCCHEXDGWmSbtI6tqKD4dt1yesTFM1Ed2usy7GdlL6bpOuVzGcRwURUFRFBKJBO+++y75fJ5sNsvNN9/MggULvJlb0zS9/bJtbW2kUikuXrxIQ0MDw8PD6LrO+fPnvSJPtbW1GIbB+fPnsSyLhoYG/H4/pmlW+u0LIYQQQgghxJRpDQlS/+MShj9mUnXMT9N//hPOvxTMnS/mdZD1+/34/X6i0SiAt3+1WCwCcOHCBQqFAh/+8Ie9gHv27FlqamrYtGkT0WiUAwcOEAqFUFWVWCzG4sWLgdGQrGkaIyMjlEolfD4ftm17s7JCCCGEEEIIMR91PbSUJRs7+M2Sf8Tc4PC5T/8Nhe+0Etz9RqWHds3mVdXi9yqVSpTLZaqqqlAUhVtuuYW6ujrvedu26e/v56233mJkZISGhgYikQh+v59wOIyu60SjUZYuXUosFuPQoUPs3r2bvr4+SqUSqVTK6y0bCARoaGhAUZQJ2/AIIYQQQgghxHyQu8Xg50v3EFdD1GsRdi/bw18+vR+trvaK1+ktzYxsbif3P61DW7ZklkY7sXkdZMcC6cDAAOVyma6uLpqamvjQhz6Eqv75rRUKBSKRCJZlEYvFuO2227Asi1Qq5bXdGRoa4ty5c7z77rucOHECy7Lw+/3k83ksyyKbzaJpGoZheH1qhRBCCCGEEGK+Wf5UL8v+7/+A6dresYdr3sBZ3HjF68pLGxhc7ZJqV+jYnEC/afEMj3Ry8zrIwugmZk3TKJVKFItFBgYGaGhoGBdkLcvi3Llz/PGPf6Snp4d9+/ahKAorV64kGAxy9OhRXNf1NiCPzfSOBVbDMLyetOVyGcMwKvJehRBCCCGEEOJGWee7WPKfHdLOnyfoGrQAIx+KXfE63x9O4R8azVlW2GXkY8kZHeeVzOs9soZheHtWTdNE13UKhQIDAwP4/X4sywLAdV3OnDkDQENDA67rMjQ0xOHDhxkZGQFgcHCQFStWMDg4iK7rOI7D8PAwwWCQgYEBamtryefz6Lo+LiQLIYQQQgghxHyj92XYX2pgUyQHQNYx8BWv3NDGyedZ/H+lGGxvQC86VP/2HNZsDHYC8zrIFotF6uvryeVyRKNRdF2nVCqRy+W49dZb0TSN8+fPk0wmOXLkCDBaxEnXdX7+85+jaZpXKCoWi9Hb20s+n6e5uZl0Ok17ezvnzp3zlhPruk4gECCbzVbybQshhBBCCCHEDbFPn+U//fv/icf/MkSpwSLxO42af/oTV+vNar97hup3RycJKxViYZ4HWcMw0HUdv9+Pz+cjm82iqirhcBjXdTl58iT5fJ5SqYSqqlRVVREKhTBNk6amJgqFglf1OJPJkM1maWxsJJ/PEwgEOHbsGENDQ5imieu66LqOoig4jlPpty6EEEIIIYQQN0T97Vss/O2fH18txM4l8zrIxmIx8vk8oVCIXC6H67oEg0H6+vrQdd17Pp1OAzA8PIxt2xiGQXV1Nfl8nqGhIS+YappGLBYjk8l4rzc2C6uqKtFolFQqJUuLhRBCCCGEEKKC5nWQHVtGHAwGCYfD+Hw+fD4fhUIBwzBobGz09sOOzapmMhl8Ph+apnn9ZhVFIRaLceuttzI4OEipVELTNFzXRdM0b+9tX18fjuNIH1khhBBCCCGEqKB5HWRVVSUYDBKJRCgWi5TLZWzb9nrE2rZNMpmkrq4O0zQxDIOenh4WL17MwoULURSFYrFIa2sr9fX1DA0NYds2oVAIx3GwbRvLsujt7cW2bYLBILqu4/P5GBoaqvTbF0IIIYQQQogPpHkdZMvlsvfv2F5XwzDI5XIsWLDAWyIcDoeJxWLE43EWLFhAJBJB13U+/OEPk8vlyOfzdHd3e0FYVVWGhobI5/NeWB7rKVsqlXDd+bR6XAghhBBCCCHeX6a02fOZZ55h7dq1xGIxEokEmzZt4tSpU+POWb9+PYqijPv5whe+MO6czs5ONm7cSDgcJpFI8Nhjj3mtcq6H4ziUSiUGBwcpl8vouk5/fz+ZTIZMJsPg4CA9PT0YhkFXVxdHjhzhtddeY//+/Rw7doyLFy/S3d1NKpUilUrR3d2NbdtEIhECgQCmaTI8PIxhGBJihRBCCCGEEJOaq5np/WZKM7L79u1j69atrF27FsuyeOKJJ9iwYQMnTpwgEol4523ZsoWnnnrKexwOh73fbdtm48aNJJNJDhw4QE9PD5s3b8bn87Fz587rexP/0tvVsixKpZJXpdjn8xEIBPj/s/fvwXHV9773+V6Xvqu7dXPrYslCdgiJY2MlYNgOefK4hhyYg10VMlVnmCcDJjl1nMmJ4wrwDNtxhgoTKjHZh1Q9VGUurmTmIVM1YUIlRYrzuEJyMpzBbDY+m2x2jLENAssXSZZ1v/T9si7zh7fWtkC+yLYsCT6vqi53r16r12+1/M+nf7/1/YZCIarVKoODg8G9sqlUCsdxKBaLGIaBbdtBcadqtUqtVpsz+2pZFpZlBceLiIiIiIh82HLNTB83hn8NqWxsbIxMJsPBgwf58pe/DJz/daGnp4dnn3123mNefvlltm/fztDQEC0tLQDs37+fPXv2MDY2Rjgcvux5s9ks6XR67oUYRlBd2HEcHMf5SJscy7IwTRPLsoI2Or7v4/t+cE/sh/efDcnVajXYf9bMzAypVOqy4xURERERkU+mpc5MW/kqtrE0xWodv8arvLQouema+sjMtrVpbGycs/3Xv/41zc3NbNiwgb1791IsFoP3Dh06xMaNG4M/CMC9995LNpvl2LFj856nUqkEy4RnHx/m+z7lcplisYjneYTDYZLJJKlUikgkElQhnp21nS0OVa1Wgyn62UJOsViMeDxOOBzGdV1KpRKu62omVkREREREFmQ5ZaaPk6su9uR5Ho888gh33XUXGzZsCLZ//etfp6uri/b2do4cOcKePXvo7e3lxRdfBGB4eHjOHwQIXg8PD897rqeffpof/ehHVzy22RnZ2SXGlmURCoWwbRvbtjEMg1gsBkChUMAwjKC/bK1Wo1arXdF5FGxFRERERORilkNmcqjBEsUWh/O5ajFy01UH2V27dnH06FFef/31Odu/9a1vBc83btxIW1sbd999N319faxbt+6qzrV3714ee+yx4PWpU6fo6em5omM9z8PzvI+E06mpqasay4VyudxHljiLiIiIiIjA8shMr/OHqxv8dbQYuemqgux3v/tdDhw4wGuvvUZHR8cl973zzjsBOHHiBOvWraO1tZU333xzzj4jIyMAtLa2zvsZkUiESCQSvO7q6gLOV/K60UEym83S2dnJ8ePHaW9vv6HnFhERERGRleGTnJlg8XPTgoKs7/vs3r2b3//+97z66qt0d3df9pjDhw8D0NbWBsCWLVv4yU9+wk9/+lP279/P8PAwbW1tJBIJ1q9ff0XjMM3zt/am0+klK7a0evXqYBwiIiIiIiJwfTPT6Ogov/3tb3nmmWc4e/YspmlSKBSuaBzLITPB4uWmBVUt/s53vsPzzz/PSy+9xC233BJsT6fTxGIx+vr6eP7557nvvvtoamriyJEjPProo3R0dHDw4EHgfCnp7u5uBgcHefLJJ2lra+N73/seAGfOnCGTyVx2HLMVuJaiavBSnltERERERJa365WZenp6ME2Td999l927d/Pcc8/R1dXF6dOn6e3tvWxuWurcstjnX1CQNQxj3u3PPfcc3/jGNxgYGODBBx/k6NGjFAoFOjs7+drXvsYTTzwxZ/A9PT1MTU0xNjZGIpFgx44d/OY3v2H37t18//vfv+w4FGRFRERERGQ5ul6Z6cyZM2zatIl8Pk9DQwMPP/ww+/bto7u7+4py01LnlsU+/4KXFl9KZ2dn8CvCxVSrVY4ePcrvfvc77r///mD7+Pg4hw4duqJxhEIhHn30Ucrl8hXtfz1VKhX27NnD+Pg4dXV1Wl4sIiIiIiKB65GZ4Pwy43w+/5Hc9JWvfOWKctNSZiZY/Ny0oBnZ62FoaIjVq1fzxhtvsGXLlmD73/7t33Lw4EH+8R//8SPHVCoVKpVK8Prs2bNXfD/tYhoYGLjsjdsiIiIiIiILtdDctFwzEyxObrrq9js30kL7yN4oyWRyqYcgIiIiIiJy0cz0Je7DJrQEIzrfR/Z1/rAouemGr4ttbm7GsqygfPSskZGRi5aS3rt3LzMzM8FjYGDgRgz1si62/l1ERERERORaLDQ3XSwz2YSwjSV6/EuAXozcdMODbDgc5rbbbuOVV14JtnmexyuvvDJnyvxCkUiEVCo15yEiIiIiIvJxtdDc9EnLTEuytPixxx7j4Ycf5vbbb+eOO+7g2WefpVAo8M1vfnMphiMiIiIiIrLsKDdd3JKU3H3ggQf42c9+xg9/+EN6eno4fPgwf/zjH2lpabmi43/xi19c0/kjkQi2bRMKha6petYjjzwy53V/fz/btm0jHo+TyWR4/PHHcRznmsYqIiIiIiKfTNeSm641M11Pi5GbbnjV4mv1wgsv8NBDD1Gr1a5of9M0iUQiQWiNx+OkUilqtRqGYTAzM4PjOFQqFRzHwXEcPM/DMIzLls6+sPrWbNPi1tZWnnnmGc6dO8eOHTvYuXMn+/btu+brFhERERERuRIXZqatfBXbWKJiT36NV3lpUXLTiguyd955J5s2beKXv/zlRfcxDINYLEY4HCYajVJfX0+5XCYUCuG6LrFYjGg0SrlcplgsUqvViEQi1Go1yuUyjuOQy+UuG5YvbO778ssvs337doaGhoJfSPbv38+ePXsYGxsjHA5fvy9BRERERETkIi7MTMshyC5GblqSpcVXq1qt8tZbb7F169aL7hMOh1m1ahWrVq0ik8lg2zZjY2NMT0+Tz+dxXZdCoUCtVsPzPDzPw/f9INRalkUikaCpqYnm5mZs++K3EReLxeD5oUOH2Lhx45xp/nvvvZdsNsuxY8euy/WLiIiIiIhcypVkphttMXLTigqy4+PjuK5LJpP5yHuGYVBXV0d7ezvNzc00NTURi8UwDINEIkFzczPxeJxQKES1WmV8fJxarRYE2rq6OlavXk0kEsEwDEKhEI2NjTQ2NhKNRucdz86dO4Pnw8PDH1mrPvt6eHj4On4LIiIiIiIi87tUZloqi5GbVlSQvZRUKkV7ezutra2YpsnIyAhnz54NZl0Nw8CyLNrb22lsbMQwDCqVCuFwGNM08TyPfD6PbdtBIai2tjZuueUWmpubiUQiHznngQMH6OvrW4KrFRERERERWRkWIzetqCA72xR4dHR0zvZ0Ok0ymQRgYmKCbDaLYRiEw2ESiQTxeJxwOIxt24yPjzM1NYXneVQqFVzXJR6PB8WdSqUSxWKRSqVCqVRiamqK1tZWWlpagnNc6MSJEwC0trbO26x49j0REREREZHFdrHMtNSud25aUUF2tinwwYMH52xLp9NMTU2Ry+UIh8N0dXURjUaxbZtKpcL4+DiFQoFbb72VWq0W3Pc6O/sajUaZnJxkZGSE4eFhJiYmmJyc5Ny5cxQKBYaHh4PA++F7Ztva2gDYsmUL77zzzpz/MH/+859JpVKsX7/+Bnw7IiIiIiLySTdfZloOrnduWlFBFs43Bf7Vr34VvG5sbKRcLuN5HvF4nPfffx/TNDEMg2q1SqVSwTAMSqUSx48fJ5/PU6vVME2TUCiE53kUCgWSySSf+cxn6Onp4bbbbuOLX/wi2WwW13XxPI9yuUxdXV1QbQvgi1/8IrfeeisA99xzD+vXr+ehhx7i7bff5k9/+hNPPPEEu3btmndZsoiIiIiIyGL4cGZaaouRmy5ekneZeuCBB+jv7+dv//ZvsSyLSCRCLpejvr6ebDaL7/s4jhPc4NzW1saRI0dwXZfJyUmi0Sh1dXVBcajZQBuLxajVakGRqPr6eg4fPozruti2Tblcxvd9kskkk5OTwPn+TLMsy+LAgQP8x//4H9myZQuJRIKHH36Yp556aqm+KhERERER+QS6MDMtB4uRm1ZcH1mAbDYb3Bfb3NxMf38/jY2NlEolLMuis7OTcrlMT08P5XKZo0ePUi6Xg2XHDQ0NRKNRfN/n5MmTwQxuJpMhFAoxPT1NOBzmL3/5C4lEAoBarUa1WiWVSjE8PEy5XJ7TD0lERERERGS5mM1MF+sja4TCGCEb74LWONfbfH1kr5cVNyN7oWg0GvSBdRwnaLXT19cXLBnevHkzn/nMZygUCsTjcXK5XPB+d3c35XKZgYEBVq9eHRSGev/99xkdHWXdunXB5+fzeUqlEnV1dZfsLSsiIiIiIrKc2R2rOfEf12AVDTpfycN/O7LUQ1qwFXeP7IVm2+ZYloXrutx0000AlEolKpUKk5OTHD16NFgS3NTUxNtvv83Q0BB/8zd/w+23304ymaSlpYWmpiaampo4dOgQxWKRtrY2TNOkWCySy+VwXXfOeUVERERERFaik/+hi1ceeoYvbDvO//j//v/Q93wP3pd6lnpYC7KipxbD4TC+75PJZKhUKjiOQyQSwbZtHMehUqlw8uRJisUiGzZsoFarEYlECIVCJBIJKpUK8Xicuro6qtUq7733HqtWrSIajZLL5Zieng5mex3HYdWqVRiGQSj00al5ERERERGRlSA8BTnPZP+aP1JnRjmx9Vfs6P4yY3fHL7nU2G5tYWprN74BDW+N4b5/fXvDLsSKnlqsVqskEgmmp6eDYk719fXce++9xOPxOfu5rktvby/RaJTW1lZisRiTk5Pk83kGBgaYnp7m3Xffpbe3l/fffx/LsgDI5/NUq1UcxwHO3yvred6SXK+IiIiIiMi1avu//RO7v/Fdjlb/dYJuTWwK/iUDXYzb1szobQajm+Hk/74Fe3X7Yg/1olZ0kPU8j6mpKSzLolwuU61WmZycDIo+zVq1ahWDg4McOXKE0dFRxsbGKJfLrF27lmKxSG9vL1NTU7S0tABQLpep1WqUy2USiUSwrLhSqQStfkRERERERFYiv1Yl/O4gfbVMsO3V4ZvxCpcp/PROL/Xvg+GDU+dRvqVtkUd6cSt6abHjOJimGSwlTqVSVCoVRkdHaW1tpVar4bouZ86coVKpAJBMJnFdl2PHjvHGG29QrVYxTZOJiQk+//nPs3btWjzPI5fLYRgGnudRrVZJJpNUq1Vs2w4+S0REREREZCVyR8f40T9vp2fLflqs8xN1hmngX2LOznccVj1/hOb1a/EtA/Pw+yzVFN+KDrKlUonGxkZyuRzJZJJCoYBhGBSLRVpaWuju7sayLMbGxjh8+DB1dXU0NzdTLpc5dOgQ0WiUTCZDIpGgoaGB4eFhxsbGyGQyxONxuru7OXnyZNBH1rIsTNOkVqst9aWLiIiIiIhcPd/nU/+HUzze8TC1VQnSfaPB7ZSX4hUK8Jd3zj9f7DFewooOspVKhWg0SrlcxjAMXNfFsixSqRSFQoFjx46Ry+Wor6/HMAyi0SjRaJRqtUp9fT2WZVEoFFi3bh2Tk5MMDQ3R1dWF7/tMTk7S398PgOu6GIaBbdvBLK2IiIiIiMhK5mazcDyLCVw+wi4vKzrIplIpstlsEE4dx8H3fUZHR/F9n4aGBnK5HFNTUwAMDw9TLBbJ5/MAwZLkwcFBAEKhEJZlMTIyEoRX3/exbZtQKEQ8HmdkZETtd0RERERERJbQig6yhUIBz/OIxWJBG53ZIk2+7xOLxfj0pz/N8PAw+Xwe3/fJZrOEQiFisRjZbBY43xc2Ho/T0dFBNpvFdV1M0wz+nW3pc/bsWWq12pxCUiIiIiIiInJjreggGwqFghBaLpdxHIdYLEYsFgtmUy3Loru7G9M0KZVKDAwMcNNNN9Ha2soHH3xAqVSiq6sL27bJ5XLYth0EYtd1KRQKZLNZPM8jkUiQSCRwHCeY1RUREREREZEba0UH2VKpFPw7OyvrOA5TU1MkEgkMwyCfzxOJRKirqyMej3PLLbcQiUSoVCqsX7+emZkZfN9namqKarVKsVikVqtRKpWoVCoYhkEqlcK2bQqFQjCzKyIiIiIiIktjQTd7Pv3002zevJlkMkkmk+H++++nt7d3zj5bt27FMIw5j29/+9tz9unv72fbtm3E43EymQyPP/74FVXIuhjP8ygUCkxOTlKpVLBtG8/zyGazZLNZxsfHOXPmDIODg5w4cYJjx47xj//4j7z55pscO3aM3t5eBgYGGBsbY3x8nEKhgGmaJBIJ4vE4+XyesbExisWiQqyIiIiIiFzUcs1MHzcLmpE9ePAgu3btYvPmzTiOww9+8APuuecejh8/TiKRCPbbuXMnTz31VPA6Ho8Hz13XZdu2bbS2tvLGG29w7tw5duzYQSgUYt++fVd1EZZlBdWEy+Vy0CrHtm1s2yaRSAT9YGerGzc0NMypPhyLxQAIh8NUq1UqlQq1Wi0IrrP9ai/cJiIiIiIicqHlmpk+bgz/GlLZbM/VgwcP8uUvfxk4/+tCT08Pzz777LzHvPzyy2zfvp2hoSFaWloA2L9/P3v27GFsbIxwOHzZ82azWdLp9NwLMQzC4TCe52EYBo7jzAmqs790zIZey7LwfT/Y13Xdj7TVme0bOxuSXdedE2JnZmZIpVJX9F2JiIiIiMgnz1Jnpq18FdsIXbfrWQjHr/EqLy1KbrqmPjIzMzMANDY2ztn+61//mubmZjZs2MDevXspFovBe4cOHWLjxo3BHwTg3nvvJZvNcuzYsXnPU6lUgmXCs48P830/mEV1XZdwOEwikSAWixEOhzFNE9/3cRyHarVKqVSiXC5TKpWCKXrbtolEIkG/2dn2PBe29hEREREREblSyykzfZxcdbEnz/N45JFHuOuuu9iwYUOw/etf/zpdXV20t7dz5MgR9uzZQ29vLy+++CJwvpfrhX8QIHg9PDw877mefvppfvSjH13x2FzXxXXd4PXsEmPTNAmFQriuSzKZxHXdoKBTtVoFoFarXfHacwVbERERERG5mOWQmRxqsESxxaEGLE5uuuogu2vXLo4ePcrrr78+Z/u3vvWt4PnGjRtpa2vj7rvvpq+vj3Xr1l3Vufbu3ctjjz0WvD516hQ9PT1XfLzjOEE4na10XCgUrmosF8rlch9Z4iwiIiIiIgLLIzO9zh+ubvDX0WLkpqsKst/97nc5cOAAr732Gh0dHZfc98477wTgxIkTrFu3jtbWVt588805+4yMjADQ2to672dEIhEikUjwuqurCzhfyetGB8lsNktnZyfHjx+nvb39hp5bRERERERWhk9yZoLFz00LCrK+77N7925+//vf8+qrr9Ld3X3ZYw4fPgxAW1sbAFu2bOEnP/kJP/3pT9m/fz/Dw8O0tbWRSCRYv379FY3DNM/f2ptOp5es2NLq1auDcYiIiIiIiMD1zUyjo6P89re/5ZlnnuHs2bOYpnnFK0uXQ2aCxctNC6pa/J3vfIfnn3+el156iVtuuSXYnk6nicVi9PX18fzzz3PffffR1NTEkSNHePTRR+no6ODgwYPA+ftXu7u7GRwc5Mknn6StrY3vfe97AJw5c4ZMJnPZccxW4FqKqsFLeW4REREREVnerldm6unpwTRN3n33XXbv3s1zzz1HV1cXp0+fpre397K5aalzy2Kff0FB1jCMebc/99xzfOMb32BgYIAHH3yQo0ePUigU6Ozs5Gtf+xpPPPHEnMH39PQwNTXF2NgYiUSCHTt28Jvf/Ibdu3fz/e9//7LjUJAVEREREZHl6HplpjNnzrBp0yby+TwNDQ08/PDD7Nu3j+7u7ivKTUudWxb7/AteWnwpnZ2dwa8IF1OtVjl69Ci/+93vuP/++4Pt4+PjHDp0aN5jKpUKlUoleF0qldi9ezflcvnKB3+dVCoV9uzZw/j4OHV1dVpeLCIiIiIigeuRmeD8MuN8Pv+R3PSVr3xl3ty0nDLT7HgWMzddddXiqzU+Po7ruvOWk37vvffmPeZipaR//vOfL8oYr8Tf/d3fMTAwcNkbt0VERERERBZqoblpOWYmWLzcdMOD7NX4cCnpmZkZ1qxZs4QjOi+ZTC71EERERERERC6amb7EfdiElmRMDjVe5w+LkptueJBtbm7GsqygfPSskZGRKy4lvVxcbP27iIiIiIjItVhobrpYZrIJYRtLE2T5l1XWi5GbbvgNnuFwmNtuu41XXnkl2OZ5Hq+88gpbtmy50cMRERERERFZdpSbLm1JlhY/9thjPPzww9x+++3ccccdPPvssxQKBb75zW/ekPPb9vnLNk0T13VxXfeGnFdERERERORKLXVuWs6WpOTuAw88wM9+9jN++MMf0tPTw+HDh/njH//4kRuZL+YXv/jFFZ/LNE3C4TDJZJLm5mY6Ozu5+eab+cxnPkNPTw/t7e00NDQQjUaxbXtB096PPPLInNf9/f1s27aNeDxOJpPh8ccfx3GcK/48ERERERGRWdeSmxaSmRbbYuSmBfWRXQ5eeOEFHnroIWq12iX3C4fDRCIREokEmUwG3/eZmprCMAxSqRS2beO6LuVyGcuyqFarOI5DqVSiWq1SLBbxPA/P8y56jgurb802LW5tbeWZZ57h3Llz7Nixg507d7Jv377r+h2IiIiIiIhczIWZaStfXbJ7ZB2/xqu8tCi5acUF2TvvvJNNmzbxy1/+ct73Z8NrNBolGo1SrVYplUrBzGwkEiGZTOL7Po7jUCwWqVQqGIaB67rEYjEMw6BUKlEsFimVShcNzRc293355ZfZvn07Q0NDwS8k+/fvZ8+ePYyNjREOhxfnCxEREREREbnAhZlpOQTZxchNS7K0+GpVq1Xeeusttm7dOu/76XSajo4OWlpaWLVqFQ0NDRiGQXNzM2vWrCGRSOB5HhMTE4yPjzMxMUGtViMUChGPx6mrqwsCrm3bdHR0BMuO51MsFoPnhw4dYuPGjXOm+e+9916y2SzHjh27rt+DiIiIiIjIfC6XmZbCYuSmFRVkZ5sCZzKZj7zX0dHB6tWraWlpIRKJMD09zdmzZ6lUKlSrVSqVCvF4nE996lMA+L6PYRjB0uF0Oo3ruti2TX19PS0tLXR0dHDrrbfS0tJCfX39R865c+fO4Pnw8PC8zYpn3xMREREREVlsl8pMS2UxctOKCrIXk06nsW0b0zQZHh5mZGQE13XxfZ9EIkE8Hsf3fVKpFMPDw9RqtSDEmqZJPB6nVCoRj8exbZtisRgE4Ww2S2NjI+l0mlgsNue8Bw4coK+vb4muWkREREREZPlbjNy0ooLsbFPg0dHRYFs4HKa+vp7p6WkmJiZobW0llUoRCoWwLAvHcZiamqJcLpPP5ykUCvi+j2ma1NXVkUwmmZmZ4dy5cwwNDXHq1CmGhobI5/OUSiVGRkYYGBjA933q6+uxLGvOmE6cOAFAa2vrvM2KZ98TERERERFZbPNlpuXgeuemFRVkZ5sCHzx4MNi2atWqoChTMplkamqK1tZWXNfFNM05VYiHhoaoVCpYloVhGBiGQTabDQpAtbe3s2nTJtauXcuaNWs4c+ZMcL9ssVikrq6OxsbGOWNqa2sDYMuWLbzzzjtz/sP8+c9/JpVKsX79+hvzBYmIiIiIyCfafJlpObjeuWlFBVk43xT4V7/6FQCWZRGNRqlUKtTV1VGpVMjn88zMzGAYBg0NDaTTaTzPo1arBZWLo9Eo7e3tdHd3B0uP16xZw9/8zd+watUqVq1axdmzZzEMg2q1im3bVKtVyuXynOXFX/ziF7n11lsBuOeee1i/fj0PPfQQb7/9Nn/605944okn2LVrF5FIZCm+KhERERER+QS6MDMtB4uRm1ZckH3ggQf48Y9/DEBdXR2u61IoFDDN85cSiUSCqeloNEo6nSYej2OaJr7vE4/HWbVqFYZhBJ8RCoUoFAp88MEH5HI5MpkMPT09JBIJYrFYsAzZ8zxs2yYUOl+++oUXXgjGZVkWBw4cwLIstmzZwoMPPsiOHTt46qmnbuTXIyIiIiIin3AXZqblYDFy04rrIwuQzWZJp9M0NzeTTCY5c+YMqVSK7u5uHMfhgw8+wHVdbr/9dtrb2zl37hz5fB7TNGlqamJqaopUKkUsFuPUqVOcPn2aO+64g3A4zOjoKENDQ0QiEVpaWpiZmaFarTI5ORmE3vfwsdwAAKExSURBVJmZGXK53Jx+SCIiIiIiIsvFbGaar4+stWoVY9s/ReNzhxZ1DPP1kb1e7Ov6aTeYbZ8ffjgcDpYNG4ZBuVwGYHBwkEKhQFNTE7ZtE41GOXv2LMPDw/y7f/fv6OjoYGxsjHXr1uG6Lm+99Ra5XA7LskilUlSrVRoaGhgcHMQ0TfL5PKtWrQrOKyIiIiIistKMbf8U/8P/+Cf+/NYdDP2vGqk/4VD3Vj/OuZXTNnRFJ7JIJILruqTTaRzHYWBggEwmw5o1a5iammJgYCDYtnHjRgzDYHR0FNu2g1nXuro6UqkUtm3T0dFBoVAgkUhQLBYZGxvD930cx6FardLc3AwQLGMWERERERFZaRp6i7w42MPQ/zHO/3zXfv79H3aSvHktbf+XSfxa9aLHmYkEhX/zOdywSf2bQzin+2/gqD80liU783XgOE6w1LdWq1GtVolGo2zatIlwODxn30KhwLFjx4hGo6xbt46uri7GxsYYGxvj6NGjDA8Pc+LECU6ePMmpU6cIh8P4vk+5XKZcLlOtVoPXs/fXioiIiIiIrDTGG2+T+t+Os339O2wI54i2FcADfO+Sx5kN9Yxsthj+Gzj9P3RgJpM3ZsDzjWXJznwdOI7DzMwMALVaDYD+/n6mp6eD6sKWZbFhwwbee+89BgcHGR8fJxwOs3r1ajKZDMVikdHRUQYGBli7di3RaBTP84hGoziOE1Q9nq2g5bourusuzQWLiIiIiIhcB16xyKuDn6LZSvB/vvV/IfPPJXzHueQxzuBZOv+/FeySgZPwMesSN2i0H7WilxbXajU8zyORSFCpVLBtG9d1GRoa4rOf/SyrV6/m05/+NAMDA0xPTwOQyWQYHBzkxRdfJBQKBVWJs9ks3d3dQdGns2fP0tTURLFYJJVKYZomlUoFz/OoVi8+3S4iIiIiIrLc+Y5D+48tur/zH0j0hun8yz9z6fnY86z/3z/zqXdbIBRa0ntqV3SQLZVKpNNp8vk88Xgcx3FwXRfDMIKZ1xMnTuC6LjfffHMQdH3f5/Dhw6TTaZqamqirq6Ourg6At956i0QiwerVq4lEIsGS5Wq1iud5WJalICsiIiIiIiue/09H+fS/P//8SkLsLGd4ZFHGsxArPsiuWrWKUCgU3LtaV1dHc3MzhmHQ19fH5OQkqVSKSqVCY2MjmUyG06dPU19fD5wvS93Y2Eg2m2VgYIDW1lYqlUpQ8RjOF3e6sCqy7pEVERERERFZOis6yDY0NFCpVEin0+RyOWq1Gtlslvfee49oNEoymWRycpLJyUngfMGnXC5HLpfD8zwMw8D3fWZb6UajURoaGoIWPLZt4/s+tm1jmiaWZZHP57EsaykvW0RERERE5BNtRQfZ2UAajUaJx+OEw2Ecx8HzPIrFIq7rsn79evL5PKOjo5RKJaanpwmFzjcEni3aZJomyWSStrY2pqamME0T3/cJh8N4nhf0jZ2YmMBxHLXfERERERERWUIrOsjato1t20SjUWq1GuVymXg8TiqVwvd9LMsKZmzXr1/P6dOnOXv2LGvXrqWpqYne3l6q1SpdXV14nkculyMcDgcBtlgsUiqVqNVq+L5PMpnENE0cxyGXyy315YuIiIiIiHwireggWy6XASgWiyQSiWCp8eTkJNFolGg0yszMDJ7ncfbsWUKhELfccgu+7zMzM8O6deuoVqsUCgUqlQrFYpFqtUqxWMRxHCqVSjBbO1u1uFQq4XkLuRVaRERERERErqcFrZF9+umn2bx5M8lkkkwmw/33309vb++cfbZu3RoURJp9fPvb356zT39/P9u2bSMej5PJZHj88cdxLtOz6FJmZ1NHRkYolUrYtk2tViOXy5HNZjl37hwffPABp06d4r333uPo0aP89a9/5Y033uCvf/0rJ0+eZGBggLGxMSYmJoKqxLFYjGg0SqFQYHJykkKhoBArIiIiIiIXtVwz08fNgmZkDx48yK5du9i8eTOO4/CDH/yAe+65h+PHj5NI/Gsz3J07d/LUU08Fr+PxePDcdV22bdtGa2srb7zxBufOnWPHjh2EQiH27dt3VRdhWRamaeJ5HuVymXK5jGma2LZNJBIhkUjg+37Qd9a2bWKxWNAT1rIswuEwvu+TSCSCz3AcJygEZVkWlmUFy4xFREREREQ+bLlmpo8bw7+GVDY2NkYmk+HgwYN8+ctfBs7/utDT08Ozzz477zEvv/wy27dvZ2hoiJaWFgD279/Pnj17GBsbIxwOX/a82WyWdDo9Z5tpmoRCISzLwnGcoOjTLMMwgsrDlmXNqVbseR6e5wXFny78zNn9XdfFdd05nzkzM0Mqlbr8FyUiIiIiIp9IS52ZtvJVbCN03a5nIRy/xqu8tCi56ZrK787MzADQ2Ng4Z/uvf/1rmpub2bBhA3v37qVYLAbvHTp0iI0bNwZ/EIB7772XbDbLsWPHrnosnucF97DOVhyOxWLE43FCoVBQibhWq1EqlSiXy1QqFSqVSjDzGgqFiEajxGIxEokEtm3jOA7lcjmYzRUREREREblSyykzfZxcdbEnz/N45JFHuOuuu9iwYUOw/etf/zpdXV20t7dz5MgR9uzZQ29vLy+++CIAw8PDc/4gQPB6eHh43nPNBs5Zs/8Z5jMbVmu1GkCw5jwUCgX9YD3Po76+PijuNLtkGMBxnOD55WiJsYiIiIiIXMxyyEwONVii2OJwPlctRm666iC7a9cujh49yuuvvz5n+7e+9a3g+caNG2lra+Puu++mr6+PdevWXdW5nn76aX70ox9d1bGzS4g//IctFApX9XkXyuVyH1niLCIiIiIiAssjM73OH67q866nxchNVxVkv/vd73LgwAFee+01Ojo6LrnvnXfeCcCJEydYt24dra2tvPnmm3P2GRkZAaC1tXXez9i7dy+PPfZY8Hp6epquri76+/tveJDMZrN0dnZy/Phx2tvbb+i5RURERERkZfgkZyZY/Ny0oCDr+z67d+/m97//Pa+++ird3d2XPebw4cMAtLW1AbBlyxZ+8pOf8NOf/pT9+/czPDxMW1sbiUSC9evXz/sZkUiESCTyke3pdHrJii2tXr0a07ymW4xFRERERORj5npmptHRUX7729/yzDPPcPbsWUzTvOjK0uWYmWDxctOCqhZ/5zvf4fnnn+ell17illtuCban02lisRh9fX08//zz3HfffTQ1NXHkyBEeffRROjo6OHjwIHC+lHR3dzeDg4M8+eSTtLW18b3vfQ+AM2fOkMlkLjuO2QpcS1E1eCnPLSIiIiIiy9v1ykw9PT2Ypsm7777L7t27ee655+jq6uL06dP09vZeNjctdW5Z7PMvKMgahjHv9ueee45vfOMbDAwM8OCDD3L06FEKhQKdnZ187Wtf44knnpgz+J6eHqamphgbGyORSLBjxw5+85vfsHv3br7//e9fdhwKsiIiIiIishxdr8x05swZNm3aRD6fp6GhgYcffph9+/bR3d19RblpqXPLYp9/wUuLL6WzszP4FeFiqtUqR48e5Xe/+x33339/sH18fJxDhw5d0TgikQhPPvnkvFPni20pzy0iIiIiIsvb9chMcH6ZcT6f/0hu+spXvnJFuWmpc8tin/+qqxZfrfHxcVzXnbec9HvvvTfvMR+uOOx5Hjt27Ah6wd5ojz76KGNjY7S3t+s+WRERERERue4WmpuWW2aCxc1NNzzIXo1rab+zmAYGBi5bgUxERERERGSxLdfMBIuTm254kG1ubsayrKB89KyRkZErLiU9MzPDmjVrFnWcVyKZTC71EERERERE5GNoobnpYpnpS9yHTWjRxzsfhxqv84dFyU03fF1sOBzmtttu45VXXgm2eZ7HK6+8wpYtW+Y9JhKJkEqlgsdS9EGaz8Vu5BYREREREbkWC81NF8tMNiFsY4ke/xKgFyM3LcnS4scee4yHH36Y22+/nTvuuINnn32WQqHAN7/5zaUYjoiIiIiIyLKj3HRxS1Kp6IEHHuBnP/sZP/zhD+np6eHw4cP88Y9//MiNzBfzi1/84prObxgGpmli2/Y13XT8yCOPzHnd39/Ptm3biMfjZDIZHn/8cRzHuaaxioiIiIjIJ9O15KZrzUzX02LkpgX1kV0OXnjhBR566CFqtdoV7W+aJuFweE54bW9vJ51Oc+rUKVzXpVarUS6XcV13QV/ghTctzzYtbm1t5ZlnnuHcuXPs2LGDnTt3sm/fvqu6VhERERERkYW6MDNt5avYxhLdI+vXeJWXFiU3rbgge+edd7Jp0yZ++ctfXnK/UChENBolHo+TTqdxXZdqtYrv+6RSKSzLwvd9CoUCkUiEcrkcBNpKpUK5XAbOf9EX+4oubO778ssvs337doaGhoJfSPbv38+ePXsYGxsjHA5fx29BRERERERkfhdmpuUQZBcjN62oJqjVapW33nqLrVu3XnSfUChEc3MzmUyGhoYGLMtiYmKCUqmE53lEo1ESiUQQah3HYWpqinw+j+u61NXV0djYSFNTE4lE4pJLj4vFYvD80KFDbNy4cc40/7333ks2m+XYsWPX5fpFREREREQu5Uoy0422GLlpRQXZ2abAmUxm3vcTiQSrV6+moaGBZDJJJpMhGo1SX19PR0cHa9euJZ1OUygUyGazTE9PB+G2rq6OSCSC7/tUq1XC4TCtra2k02kikci859u5c2fwfHh4eN5mxbPviYiIiIiILLbLZaalsBi5aUUF2UtJpVK0tbXR2tpKPB6nXC4zODhIuVwmEolQX19PIpGgVCoxPT2NaZp4nhcsQY5Go1iWRTKZJJVK0dDQQFdXF7feeittbW3U1dV95JwHDhygr69vCa5WRERERERkZViM3LSiguxsU+DR0dE52zOZDM3NzZimyfDwMGNjY7iuC0AsFqOpqYn33nuPU6dOUalUALAsKzjetm1SqRTRaJRIJIJt2+RyOU6fPk1DQwP19fU0NjbOu177xIkTALS2ts7brHj2PRERERERkcV2scy01K53blpRQXa2KfDBgwfnbEun00xPTzM9PU0kEiEUCmFZFoZhUKvVGBwcxDAMqtUq1WoVgM997nPBdPvY2BihUIjp6WlOnjxJNpvlS1/6Eo2Njbz77rucOXMGz/NobGz8yD2zbW1tAGzZsoV33nlnzn+YP//5z6RSKdavX7/YX42IiIiIiMi8mWk5uN65aUUFWTjfFPhXv/pV8LqpqYlsNkuxWGT16tXceuuthEIhHMfBNE1yuRwzMzPUajVc12Xr1q2Ew2Hef/99stksruvS3NxMQ0MDbW1trFmzhjVr1nDy5Ek++OADwuEw8XicSqVCMpmkvr4+OPcXv/hFbr31VgDuuece1q9fz0MPPcTbb7/Nn/70J5544gl27dp10XtsRURERERErrcPZ6althi5acUF2QceeIAf//jHwPnlwZFIhGKxSDgcJhKJkMvlME0T13VJpVJ0dnYGBZzq6+sZGhqirq6OpqYmWlpaaG1tpaWlhVKpxOrVq4nH42SzWQ4fPszk5CTT09MYhkGpVCKbzQZlo+F8f6ZZlmVx4MABLMtiy5YtPPjgg+zYsYOnnnrqhn9HIiIiIiLyyXVhZloOFiM3rbg+sgDZbJZ0Ok0ikaChoYFz586RSqXYvHkzvu9z7Ngx0uk0pmmSSCQYHh6mUqlgWRYNDQ1Eo1GAoI+saZpYlkU8HqelpYVCocCRI0eYnp4mk8kEQdgwDJLJJGfPnqVarc7phyQiIiIiIrJczGam5dZH9nqxr+un3WDhcBjP8/A8D9/3sSyLXC4XzLiuWrUqWFI8NjZGNBolnU7T0dFBLpejWCxSKBQ4deoUGzduJBwOc+LECSzLIpFIEIvF8H0/+AwgOI+IiIiIiIgsjRW3tPhCtm3j+z6GYeC6Ln/5y18AmJycZNOmTaRSKWZmZoJesnV1dRQKBaamplizZg3/9t/+WxKJBOvWreP48eO88cYb9Pb2cvLkSVKpFHV1ddTV1WFZFo7j4Lpu0LJHRERERERkxTLPT87ZXZ2YPesx4/ElHtDCrOgZWdM0CYVC1NfXBzOn5XKZu+++G9u2OXDgAJOTk7S3t9Pd3Y3runzwwQccP36csbExqtUqTU1NOI5DMplkYmKCcrlMe3s7uVyOycnJYCa2VCqRyWQwDEMzsiIiIiIisrJ5Lvbamzi5o51a0qP+vU00/T/fBM+96CGGbVP77zdRS1rU/cMp3LGxGzjguVZ0kJ29vbdYLGJZFrZtUygUGBwc5O2332ZiYgIgaK0zODhIOp1m7dq1fPazn6VareK6Lv/8z/9Me3s7U1NTjI+PUy6Xqa+vx/M8XNcN9gOoVqvBPbYiIiIiIiIr1fiX2qimPfDBqnDJEAvng+z4rRHynR6p1TeT+b9PXvaYxbKilxaHQiGKxSKGYVCpVAiFQoyNjTE1NUU8HicajdLY2EhzczPvvvsu09PTjI+PE41GSSQStLa2cvr0abLZLH19fXzqU59i1apV2LaNbdt4nkd9fT3VajW4OblWq32kl6yIiIiIiMhKkxiqYpUNouMmzf/l5GX398plOn7XT13/+TxkmMZiD/GiVvSMbKlUolarEYlECIVCGIZBIpFgcnKSzs5O7rrrLizL4sSJE8GMaktLCyMjI/T29rJ+/XoSiQThcJharcbMzAw33XQTkUiEsbExVq1axfj4OM3Nzdi2TTabJRQKkc/nl/jKRURERERErk3olX/m5mMt+NUqzsTkFR3jDAzS9n8dxbBMPMdZ5BFe3IoOspVKhVgsRqlUIhqNEgqFiEQi1NfXUywWGRsbwzAMbrrpJlKpFOPj49i2TSqVYmhoiFOnThGPx4MgXKlUglY93d3dOI6DbdtUq1VKpRIAnucFz0VERERERFYs38c5N7zww2pV/NoijGcBVnSQLRaLNDY24vs+lUoF13WDmdlQKEQqlaK/v5+pqamgsFNzczOnT5+msbERx3EYHR3FNE2q1SojIyOsXbsW3/c5d+5c8JmzS40jkQiO47ACW++KiIiIiIh8bKzoIJtOp6lUKiQSCVzXpVarBQWeLMuisbERz/PI5/N4nkexWGR8fJxqtUo4HKZcLhMKhahWqwDU19dTqVQY+5fqW6FQiFAohGmamKZJOBwO7skVERERERGRpbGig2yxWCSbzRKNRolEIkSjUTzPw/M8TNOkWCxyyy23kEqlOHbsGOPj48Gsba1Ww/d9qtUqpmmSTqdpb29nenoay7IwTRPf9/F9n0gkQqlU4ty5cziOo2JPIiIiIiIiS2hFB9lQKEQ0GiUajeK6LpVKhXA4TDweD3rMTk9PYxgGGzZsYGhoiLGxMW6++Waampo4efIk5XI5mLktFArYth30ii0WixQKBWZmZvA8j3g8jmVZOI6jgk8iIiIiIiJLZEUH2UKhAEA+nyedTpNOp6lWq0xNTREOh6mrqwuKMxWLReLxOF1dXZimydjYGO3t7ZRKJbLZLMViEcdxKJVKOI5DuVymXC5jGAbxeBzbtqlUKuTzed0jKyIiIiIisoQWtEb26aefZvPmzSSTSTKZDPfffz+9vb1z9tm6dSuGYcx5fPvb356zT39/P9u2bSMej5PJZHj88cdxrqF0s+d5TE1NMTQ0RLFYJBaLYZomhUKByclJTp48SX9/P319fbz//vscPXqUt99+m7/+9a8cO3aMU6dOce7cOUZGRpiYmKBQKGCaJolEglgsRrlcZmpqimKxqBArIiIiIiIXtVwz08fNgmZkDx48yK5du9i8eTOO4/CDH/yAe+65h+PHj5NIJIL9du7cyVNPPRW8jsfjwXPXddm2bRutra288cYbnDt3jh07dhAKhdi3b99VXcTsMuJarUahUAiCaDgcJhaLEYlEME2TWu18jehqtUooFMJxHBzHIRwOYxgGtn3+68jn81Sr1eA+WjhfPMq2bWq1Gp7nXdU4RURERETk4225ZqaPG8O/hinGsbExMpkMBw8e5Mtf/jJw/teFnp4enn322XmPefnll9m+fTtDQ0O0tLQAsH//fvbs2cPY2BjhcPiy581ms6TT6TnbTNPEsqygorDjOHMC5+x9r4ZhYJomnucFv354nofruh8JqJZlBcc4joPrunPen5mZIZVKXXa8IiIiIiLyybTUmWkrX8U2QtftehbC8Wu8ykuLkpuuqfzuzMwMAI2NjXO2//rXv6a5uZkNGzawd+9eisVi8N6hQ4fYuHFj8AcBuPfee8lmsxw7dmze81QqFbLZ7JzHh3meR61Wo1qt4nleUPQpFosRDoeDKsSO41CpVIJ9q9VqMEU/2ys2EomQSCSCGdjZfrIiIiIiIiILsZwy08fJVRd78jyPRx55hLvuuosNGzYE27/+9a/T1dVFe3s7R44cYc+ePfT29vLiiy8CMDw8POcPAgSvh4eH5z3X008/zY9+9KMrHtvskmEgWDJs2/acQGvbNr7v47pu8Jh9PRt2L0f3y4qIiIiIyMUsh8zkUIMlii0O52/tXIzcdNVBdteuXRw9epTXX399zvZvfetbwfONGzfS1tbG3XffTV9fH+vWrbuqc+3du5fHHnsseH3q1Cl6enqu6Fjf94N7Y68knC5ELpf7yBJnERERERERWB6Z6XX+cHWDv44WIzddVZD97ne/y4EDB3jttdfo6Oi45L533nknACdOnGDdunW0trby5ptvztlnZGQEgNbW1nk/Y3a576yuri7gfCWvGx0ks9ksnZ2dHD9+nPb29ht6bhERERERWRk+yZkJFj83LSjI+r7P7t27+f3vf8+rr75Kd3f3ZY85fPgwAG1tbQBs2bKFn/zkJ/z0pz9l//79DA8P09bWRiKRYP369Vc0DtM8f2tvOp1esmJLq1evDsYhIiIiIiIC1zczjY6O8tvf/pZnnnmGs2fPBi1Gr8RyyEyweLlpQVWLv/Od7/D888/z0ksvccsttwTb0+k0sViMvr4+nn/+ee677z6ampo4cuQIjz76KB0dHRw8eBA4X0q6u7ubwcFBnnzySdra2vje974HwJkzZ8hkMpcdx2wFrqWoGryU5xYRERERkeXtemWmnp4eTNPk3XffZffu3Tz33HN0dXVx+vRpent7L5ubljq3LPb5FxRkZ1vbfNhzzz3HN77xDQYGBnjwwQc5evQohUKBzs5Ovva1r/HEE0/MGXxPTw9TU1OMjY2RSCTYsWMHv/nNb9i9ezff//73LzsOBVkREREREVmOrldmOnPmDJs2bSKfz9PQ0MDDDz/Mvn376O7uvqLctNS5ZbHPv+ClxZfS2dkZ/IpwMdVqlaNHj/K73/2O+++/P9g+Pj7OoUOH5j2mUqnMKdRUKpXYvXs35XL5ygd/nVQqFfbs2cP4+Dh1dXVaXiwiIiIiIoHrkZng/DLjfD7/kdz0la98Zd7ctJwy0+x4FjM3XXXV4qs1Pj6O67rzlpN+77335j3mYqWkf/7zny/KGK/E3/3d3zEwMHDZG7dFREREREQWaqG5aTlmJli83HTDg+zV+HAp6ZmZGdasWbOEIzovmUwu9RBEREREREQumpm+xH3YhJZkTA41XucPi5KbbniQbW5uxrKsoHz0rJGRkSsuJb1cXGz9u4iIiIiIyLVYaG66WGayCWEbSxNk+ZdV1ouRm274DZ7hcJjbbruNV155JdjmeR6vvPIKW7ZsudHDERERERERWXaUmy5tSZYWP/bYYzz88MPcfvvt3HHHHTz77LMUCgW++c1vLsVwRERERERElh3lpotbkpK7DzzwAD/72c/44Q9/SE9PD4cPH+aPf/zjR25kvphf/OIX13R+wzAwTRPDMK5pmvuRRx6Z87q/v59t27YRj8fJZDI8/vjjOI5zTWMVEREREZFPpmvJTdeama6nxchNC+ojuxy88MILPPTQQ9RqtSs+xrbtYL14PB4nGo1iGAb5fB7f96lUKvi+T7VaxXXdK/7cC6tvzTYtbm1t5ZlnnuHcuXPs2LGDnTt3sm/fvoVdpIiIiIiIyFW6MDNt5atLdo+s49d4lZcWJTetuCB75513smnTJn75y19ecj/LsojFYiQSCaLRKJZl4fs+hmEQjUaJRCLk83kKhQK2beO6LtVqlUqlguM4lMtlPM+75DkubO778ssvs337doaGhoJfSPbv38+ePXsYGxsjHA5fny9ARERERETkEi7MTMshyC5GblqSpcVXq1qt8tZbb7F169aL7mOaJul0mubmZpqbm7Ftm2KxSDabxXGcILSWy2XC4XAwE1utVgmFQqRSKRoaGmhtbaWhoYFwOHzR5r3FYjF4fujQITZu3Dhnmv/ee+8lm81y7Nix6/YdiIiIiIiIXMyVZKYbbTFy04oKsrNNgTOZzLzvx2IxWlpaaGlpob6+nu7ubpLJJI2NjWzYsIF169axdu1aisUiMzMz5HI5LMsiHo+TSqUIh8MYhoHjOIRCIerr60kkEtj2/DWxdu7cGTwfHh6et1nx7HsiIiIiIiKL7XKZaSksRm5aUUH2Upqbm2lvb2ft2rUkEgkqlQpDQ0NMTk6SSCRob29n3bp1HDt2DMdxMAwD13WD2deWlhYaGhqCZcepVIpbbrmFT3/607S0tART4Rc6cOAAfX19S3C1IiIiIiIiK8Ni5KYVFWRnmwKPjo7O2V5fX08ymSQUCjE4OMjo6CiO45DNZonH47S0tHDkyBFOnToVFH6KRqOEQiEMw6Cjo4OGhgY2b95Ma2srlmUxPT3NqVOnaGtrIxaLkU6n512vfeLECQBaW1vnbVY8+56IiIiIiMhiu1hmWmrXOzetqCA72xT44MGDwbZoNEpDQwOFQoHR0VFM08S2bSzLwjAMSqUSb731FuPj45w5c4b169eTTCZxHIdUKkWtVuPo0aOUSiWmp6cZGhrCMAza29sJhUK8//77jI+PY5omjY2NH7lftq2tDYAtW7bwzjvvzPkP8+c//5lUKsX69etvzBckIiIiIiKfaPNlpuXgeuemFVe1+IUXXmDHjh1Uq1UA1qxZQ6VSYWZmho6ODmKxGOVymXK5TC6Xo1arYZomoVCISCSCZVlBBeNarYZhGGQyGerr66nVatTX1+P7PiMjIxw7dozOzk6q1Sqe52HbNjMzM0xOTgLwxS9+kX/4h38A/rWMdHt7O//pP/0nhoeHeeihh/gP/+E/qP2OiIiIiIjcMBdmpuVQtXgxctOKmpGF802Bf/zjHwPnW+zYtk0+nycSidDU1EQqlQqKNVmWRUdHB+FwGNu2gyrGruuSSqVoamqiubmZZDJJR0cHnucxODjI0NAQg4ODWJZFOBzGcRympqaoVqskk8lgLC+88ELw3LIsDhw4gGVZbNmyhQcffJAdO3bw1FNP3fDvSEREREREPrkuzEzLwWLkphU3IwuQzWZJp9PEYjEaGxsZGhqivr6edevW4TgO09PTxGIxZmZmWLNmDSMjI5TLZWKxGLFYDMMwME0T13UpFAokEglc1yUajRKPxxkZGeHMmTM0NjaSyWSYnJwMzmnbNmfPnsVxnDn9kERERERERJaL2fyyHGZkFyM3zd9XZoWIxWLBPauGYTA2NkYoFGLNmjV4nseaNWsoFouk02mq1Sq2bZNIJII2O6ZpUq1W6evrC2Zz16xZQyKRYHR0lEQiwczMTNCSJ5vNkkqlsG0bx3GW+OpFREREREQ+mVZ0kLUsi2q1GiwxnpqaYtWqVdx2221B8SbHcWhoaMBxHFzXZWJiglgsxpYtW/jUpz7Fiy++SKFQYGRkhHPnzvH2228TCoWYnahOJpPMzMxg23bwiEQilMvlJb56ERERERGRa2OEwljNjbjjk/i16lIP54qt6CBrmiaRSIRYLEalUsHzPADeeustWlpaGB0d5a9//Suf/vSnaW5uJpvNMjY2Ri6X469//SsjIyMkk0k+85nPcNNNN1GpVACIRCLMzMwwPT1NNpsFoFgs0tzcjOd5hEJLMzUvIiIiIiJyvRihMO//T5/n5//r/xd/+z//ezr2vXHZY5y7b2PmpjCZF9/DnZq6AaOc34oOsp7n4XkelUolmC2dnV0Nh8O8+eabVCoVHMfh5MmTjI6O0t7ezqc+9Sk++9nPUi6X+ctf/kJvby/Nzc2Ew2H6+vro7OwMikJFIhEmJibwPI9oNEqtVsN13aW+dBERERERkWti3LKW/2X7s3TYEJ65smPO/NsQh/93/xO33voIN3/vvy3uAC9hRQfZUChEPp/HMAyq1WrQeicajeJ5Hl/60pfwPI+xsTEGBgbwfZ+ZmZmgaNOqVavwfZ9isUh/fz+f/exn+dznPodhGMHnRKNRzp07R0tLSxBi6+rqmFrCXx9ERERERESu2cl+/je/fgyrbLDm//EWV1IF+NM/fpfbC4+RyC/66C5pRQfZUqmE4zjEYjE8z8NxHNLpNDMzMwwMDLB69ergvtjZe1593+e//bf/xl/+8hcikUjQqqdarVIul4PA6vs+ra2tDAwMsG7dOmq1GjMzM4TD4WC5sYiIiIiIyErlFYvc9H86BHBFIRbAnZ6h68nLL0FebCs6yFarVRKJBMViEdu2icVipFIp1q9fz9jYGO+99x6mafL5z3+ecDiM7/uYpkm5XGZ0dJSGhgbS6TSe52FZFqlUikKhwNmzZ+no6GBgYIBSqUS5XMYwDEKhEJ7nUSgUlvrSRUREREREPrFWdJAtFos0NTXhOA6VSgXXdalUKkxMTJBOp7npppvo6+vjv/7X/0qtVqOrq4v29nby+XxQHCqfzwetdN5//31uueUWmpqaOHv2LLVaDcMw8DyPSCRCKBTCcRwsy1L7HRERERERkSWyooNsfX09pVKJ+vp6xsbGcBwHx3EoFArkcjnK5TKJRCJow9PX18fZs2fxfZ94PM7k5CThcDj4vEgkQi6XI5/PY9s2lmUFs7ie5xEOh8nlckHvWhEREREREbnxVnSQzefzuK4bBNbZXrGO42DbNsVikdbWVlavXs27777LzMwM5XKZSCRCpVLB930qlQqWZVFfX09LSwuFQgHTNPF9P7ivFsBxHAYHB4MZWREREREREVkaKzrI2rZNJBLBsiyKxSK1Wo1YLEYymcS2bUzTJJ/P4/s+a9euJZ/Pk8/n+fSnP008Hqe3txfHcWhoaMDzPEqlErZtYxgGrusGBaBKpVLQficWi2GaJjMzV1ifWkRERERERK6rFR1kS6USAKZpEo1GSafTVKtVpqeniUaj1NfXAwQzr/F4nMbGxmA29qabbqJQKJDP56lWqxiGEdw/O/swDINYLEY0GiWfz1MsFufM1IqIiIiIiMiNtaCbPZ9++mk2b95MMpkkk8lw//3309vbO2efrVu3YhjGnMe3v/3tOfv09/ezbds24vE4mUyGxx9//JqKJ3meR7FYZGRkhGKxGNzbOjExwcjICKdPn+bUqVOcPHmSo0eP0tfXxz/+4z/y1ltvcfToUU6cOMG5c+c4e/YsExMTFItFDMMgkUgQjUapVCqMj49TLpcVYkVERERE5KKWa2b6uFnQjOzBgwfZtWsXmzdvxnEcfvCDH3DPPfdw/PhxEolEsN/OnTt56qmngtfxeDx47rou27Zto7W1lTfeeINz586xY8cOQqEQ+/btu6qLME0zKMhULpcpl8uYpolt28TjcSKRCL7v4zhOsNzYtu3g/ljbtgmHwziOQyqVolKpUKvVKJVKQXC17fNfled5eJ53VeMUEREREZGPt+WamT5uDP8aphjHxsbIZDIcPHiQL3/5y8D5Xxd6enp49tln5z3m5ZdfZvv27QwNDdHS0gLA/v372bNnD2NjY3OqCF9MNpslnU7P2WaaJuFwGNM0qdVquK47J3AahhEE3tmWOoZhBK105guosyF3dp9arTZnRnZmZoZUKnVF35WIiIiIiHzyLHVm2spXsY3QdbuehXD8Gq/y0qLkpmvqIzNb8KixsXHO9l//+tc0NzezYcMG9u7dS7FYDN47dOgQGzduDP4gAPfeey/ZbJZjx47Ne55KpUI2m53z+LDZ2djZc0Wj0eAxWxBqdla2Wq0GwXS2n6xhGEHxqHg8Tl1dHZFIhFqtRrFYpFqtalmxiIiIiIgsyHLKTB8nV13syfM8HnnkEe666y42bNgQbP/6179OV1cX7e3tHDlyhD179tDb28uLL74IwPDw8Jw/CBC8Hh4envdcTz/9ND/60Y+ueGy1Wo1arQacn4kNhUKEQiEsywoCreu6c96f7UFbqVSuOLQq2IqIiIiIyMUsh8zkUIMlii0O5zPZYuSmqw6yu3bt4ujRo7z++utztn/rW98Knm/cuJG2tjbuvvtu+vr6WLdu3VWda+/evTz22GPB61OnTtHT03NFx/q+T7VavarzXk4ul/vIEmcRERERERFYHpnpdf5wdYO/jhYjN11VkP3ud7/LgQMHeO211+jo6LjkvnfeeScAJ06cYN26dbS2tvLmm2/O2WdkZASA1tbWeT8jEokQiUSC111dXcD5Sl43Okhms1k6Ozs5fvw47e3tN/TcIiIiIiKyMnySMxMsfm5aUJD1fZ/du3fz+9//nldffZXu7u7LHnP48GEA2traANiyZQs/+clP+OlPf8r+/fsZHh6mra2NRCLB+vXrr2gcpnn+1t50Or1kxZZWr14djENERERERASub2YaHR3lt7/9Lc888wxnz57FNE0KhcIVjWM5ZCZYvNy0oKrF3/nOd3j++ed56aWXuOWWW4Lt6XSaWCxGX18fzz//PPfddx9NTU0cOXKERx99lI6ODg4ePAicLyXd3d3N4OAgTz75JG1tbXzve98D4MyZM2QymcuOY7YC11JUDV7Kc4uIiIiIyPJ2vTJTT08Ppmny7rvvsnv3bp577jm6uro4ffo0vb29l81NS51bFvv8CwqyhmHMu/25557jG9/4BgMDAzz44IMcPXqUQqFAZ2cnX/va13jiiSfmDL6np4epqSnGxsZIJBLs2LGD3/zmN+zevZvvf//7lx2HgqyIiIiIiCxH1ysznTlzhk2bNpHP52loaODhhx9m3759dHd3X1FuWurcstjnX/DS4kvp7OwMfkW4mGq1ytGjR/nd737H/fffH2wfHx/n0KFD8x5TqVSoVCrB61KpxO7duymXy1c++OukUqmwZ88exsfHqaur0/JiEREREREJXI/MBOeXGefz+Y/kpq985Svz5qbllJlmx7OYuemqqxZfrfHxcVzXnbec9HvvvTfvMRcrJf3zn/98UcZ4Jf7u7/6OgYGBy964LSIiIiIislALzU3LMTPB4uWmGx5kr8aHS0nPzMywZs2aJRzReclkcqmHICIiIiIictHM9CXuwya0JGNyqPE6f1iU3HTDg2xzczOWZQXlo2eNjIxccSnp5eJi699FRERERESuxUJz08Uyk00I21iaIMu/rLJejNx0w2/wDIfD3HbbbbzyyivBNs/zeOWVV9iyZcuNHo6IiIiIiMiyo9x0aUuytPixxx7j4Ycf5vbbb+eOO+7g2WefpVAo8M1vfvOGjcEwDHzfD/4VERERERFZTpZDblqulqTk7gMPPMDPfvYzfvjDH9LT08Phw4f54x//+JEbmS/mF7/4xYLOZ1kW0WiUWCxGLBajvb2dz33uc3zmM5+hra2NeDxOOBxecCWtRx55ZM7r/v5+tm3bRjweJ5PJ8Pjjj+M4zoI+U0REREREBK4tNy00My2mxchNC+ojuxy88MILPPTQQ9RqtUvuZ5om0WiUcDhMPB4nEongeR6O49DU1IRt28zMzFCpVLAsi1qthuM4VCoVqtUq5XL5sjO1F1bfmm1a3NrayjPPPMO5c+fYsWMHO3fuZN++fdft+kVERERERC7lwsy0la8u2T2yjl/jVV5alNy04oLsnXfeyaZNm/jlL3857/uzs6+pVCoIr8ViEdd1icVimKZJOp0O9p2YmAgCq+/7hEKhINQWi0VKpRK+788bai9s7vvyyy+zfft2hoaGgl9I9u/fz549exgbGyMcDi/G1yEiIiIiIjLHhZlpOQTZxchNS7K0+GpVq1Xeeusttm7dOu/7dXV1tLS00NTURCwWo7W1lXQ6TTKZZMOGDaxdu5Z0Ok2pVCKfz2MYBtFolEQiQSwWw7IsfN8nHA6TSqVobm4mnU5f9MssFovB80OHDrFx48Y50/z33nsv2WyWY8eOXdfvQUREREREZD6Xy0xLYTFy04oKsrNNgTOZzEfey2QyrFmzhptvvpnVq1fj+z75fJ7x8XGampq47777yOVy5PN5KpUKtVqNbDZLPB7HsiwMwyAcDhOJRIhGo8TjcT7/+c/T3d1NQ0PDvL2Pdu7cGTwfHh6et1nx7HsiIiIiIiKL7VKZaaksRm5aUUH2YpLJJHV1dRSLRYaHhzlz5gz5fJ5CoYBt20xPT/Nf/st/wXXdYAY2lUphmiau6zIxMcH09DQTExPEYjEAcrkcp0+f5rOf/SzRaJRkMvmRvkwHDhygr69vKS5ZRERERERkRViM3LSiguxsU+DR0dFgWzQapbm5mXw+z8zMDOVyGcMwiMViQeGmfD7PiRMngqJPlmWxdu1abPt896FVq1bR2dnJpz71KTZs2EA8HqexsZFiscjhw4fJZrNEIhEaGho+0sz3xIkTALS2ts7brHj2PRERERERkcU2X2ZaDq53blpRQXa2KfDBgweDbfX19ZRKpeAG4nA4TCKRwPM8ZmZmKBaLeJ6HaZpks1k++9nP4vs+77//flClOJFIUKlUqFQqjI+Ps3r1agD6+vqYmZkhHo8DkEgkqKurmzOmtrY2ALZs2cI777wz5z/Mn//8Z1KpFOvXr1/sr0ZERERERGTezLQcXO/ctKKCLJxvCvyrX/0KON9ip66ujmq1SiQSwTAMKpUK09PTADiOQygUwjAMEokE1WqVd999F9d1SafTtLa2Ul9fTzwep6GhgXQ6TTQaZWhoiOnpaZLJJOFwGNd1GR8fp1gsUl9fH4zli1/8IrfeeisA99xzD+vXr+ehhx7i7bff5k9/+hNPPPEEu3bt+siSZBERERERkcVyYWZaDhYjN624IPvAAw/w4x//GIB4PI7jOExNTWGa5y/Ftm0aGhqwLItYLEZ9fT22bVMqlYhGo2Sz2SCcVqtVxsbGyGazjI+PUyqVGB8fZ3R0lIGBAZqbmwmHw8ESZM/z8H0/ONcLL7wQjMuyLA4cOIBlWWzZsoUHH3yQHTt28NRTT93gb0hERERERD7JLsxMy8Fi5KYV10cWIJvNkk6naWhooK6ujoGBARKJBIlEgkgkwurVq5mcnOQzn/kM586do1arMT09TSwWIxaLBTO0tm2TzWY5c+YMMzMzfOELX6CtrY3x8XEGBwe5+eabOXHiBJVKhZmZmSAkj4yMUCwW5/RDEhERERERWS5mM9Ny6yN7vdjX9dNuMMuy8DwPy7KwLCuYdd2wYQNnz55lcnISwzCwbZtwOIzneYyPjxONRlm7di2f+9zneOWVV4LPeeeddzh79iyVSoVcLodpmti2Ta1Ww/O8oAWPZVlLfOUiIiIiIiKfXCs6yJqmiWEYhEIhfN8Plv2++eabhMPhYGZ21apVnD17lrq6Ov7yl7/gui51dXXUajVM02TdunV0d3cHfWSnpqYoFApks1kcxwGgVCpRqVSwbZu6ujpyudwSX72IiIiIiMi1sTtWc+I/rmHdz97DnZq67P6GbWO1teIMnoUlXNy74u6RvVCtVsNxnOBfy7LI5/PkcjkcxyGRSABQKBQ4ceIEf//3f4/jONTX1zM4OEipVOLkyZO8+eab9PX1Yds277//PrZtU6lUAIjFYoyPjwPn78mtVquUy+Ulu2YREREREZHrpdqdodpexf+XCbzLsVpbSP6miLv184s8sktb0UE2EolQLpcJh8PUajVCoRC1Wo1isUitViOXy5FOp3nnnXeYmJigWq0Sj8cJh8M0NDSwbt06PM+jVqsxOjpKb28vnZ2dQXGn5uZmKpUKhmHQ1tZGuVzGdV0tLRYRERERkY8F8+//yqe/+RbeFa44dQbPkt3ZTPidM4s8sktb0UuLq9UqjuMQi8WwLItisUhDQ0OwLPjMmTNBhWHDMDAMI7hXtlqt8uqrr2JZFqZp4nleUPzJMAw6OjpYvXo1lmURj8cpFotUq1VCoRClUmmJr1xERERERGRpuMffX+ohrOwgW6lUSCaTFAoFQqEQ6XQ6qFpcLpcZHR0lEokQi8VoaGigsbGRdDrN6OgoU1NTJBIJarUavu/T3t4OwOjoKKlUilAoxGuvvUalUgmWLUejUQzDCO6bFRERERERkRtvRS8tLpVKJBIJotFo0E/27Nmz9PX1kc/nueWWWzAMgzNnzjA1NYVhGMD5+14bGxuJRCI0Njbi+z5DQ0NMTU3R1dWF53mcPHkyWKLsOA6GYeD7Pq7rBp8jIiIiIiIiN96KnpFNJpPMzMwQi8Uol8uUy2UMw8DzvKAIVF1dHeFwmGKxyIkTJ2hrawuqFp86dSq4H9Y0Terq6piYmAgKPfm+H1RFNgyDeDzOxMREsFxZREREREREbrwVHWSLxSKO41BXV0c8Hg+qCgOEw2Fc18XzPNavX8/AwACTk5MMDw8HM7iz98palkUmkyGZTAb3yIZCoWAm1jAMLMuiv78/aNkjIiIiIiIiS2NFB1nTNEkkEliWRblcDgo/2baNZVk0NDRQqVQolUqsWbOGTCZDsVikpaWFVCrF+++fv0m5oaEBON+mJxKJ4Ps+oVCIYrFIqVSiVCrh+z7xeJxYLIbruhQKhaW8dBERERERkU+sFR1kK5UKlUoF0zSJx+Mkk0lqtVqw3DgSiWDbNo7jUK1WiUQi1NfX43ke09PTdHZ2Ui6Xg8+B85WQ8/k8tVqNcrkchGXTNIPly/4SNv4VERERERH5pFvQGtmnn36azZs3k0wmyWQy3H///fT29s7ZZ+vWrcFy3NnHt7/97Tn79Pf3s23bNuLxOJlMhscff/yaKgF7nkc+n2dkZIRisUgoFMJ1XSYmJhgeHubs2bOcOnWKkydPcuzYMT744APefvttTpw4wcDAAOfOnaO/v5+zZ88yOjoatNeZ7TlbLpeZmpoKZmZFRERERETms1wz08fNgmZkDx48yK5du9i8eTOO4/CDH/yAe+65h+PHj5NIJIL9du7cyVNPPRW8jsfjwXPXddm2bRutra288cYbnDt3jh07dhAKhdi3b99VXYRpmkGRp9mlwLM9YxOJBLZt4/s+nufh+z6lUolwOEwulwuWESeTSXzfD4JrpVLBdd0guJqmiWVZ1Gq1qxqjiIiIiIh8/C3XzPRxY/jXMMU4NjZGJpPh4MGDfPnLXwbO/7rQ09PDs88+O+8xL7/8Mtu3b2doaIiWlhYA9u/fz549exgbGyMcDl/2vNlslnQ6PfdC/qUg02xordVqeJ43Zx/LsrAsC9M0g/dmA/Ds48KvY/bz4Px/pg//AjIzM0MqlbrseEVERERE5JNpqTPTVr6KbYSu2/UshOPXeJWXFiU3XVP53ZmZGQAaGxvnbP/1r39Nc3MzGzZsYO/evRSLxeC9Q4cOsXHjxuAPAnDvvfeSzWY5duzYVY/F930cx6FcLuO6LtFolFgsRjQaJRwOzwm45XKZarVKtVqdM/NqWRaRSIRIJBIUjarValQqFU3ji4iIiIjIgi2nzPRxctXFnjzP45FHHuGuu+5iw4YNwfavf/3rdHV10d7ezpEjR9izZw+9vb28+OKLAAwPD8/5gwDB6+Hh4XnPdWExJvjX/wwX4zhOEDxnW+mEQiFM0yQcDuN5XlC0KRaLYVkWpVIJ13Xnncm9GN0vKyIiIiIiF7McMpNDDZYotjicvy1zMXLTVQfZXbt2cfToUV5//fU527/1rW8Fzzdu3EhbWxt33303fX19rFu37qrO9fTTT/OjH/3oqo71fT/oLQt8pG3Ohe8tVC6X+8gSZxEREREREVgemel1/nBVn3c9LUZuuqog+93vfpcDBw7w2muv0dHRccl977zzTgBOnDjBunXraG1t5c0335yzz8jICACtra3zfsbevXt57LHHgtfT09N0dXXR399/w4NkNpuls7OT48eP097efkPPLSIiIiIiK8MnOTPB4uemBQVZ3/fZvXs3v//973n11Vfp7u6+7DGHDx8GoK2tDYAtW7bwk5/8hJ/+9Kfs37+f4eFh2traSCQSrF+/ft7PmL1v9cPS6fSSFVtavXo1pnlNtxiLiIiIiMjHzPXMTKOjo/z2t7/lmWee4ezZs5im+ZEVprOWY2aCxctNC6pa/J3vfIfnn3+el156iVtuuSXYnk6nicVi9PX18fzzz3PffffR1NTEkSNHePTRR+no6ODgwYPA+eq/3d3dDA4O8uSTT9LW1sb3vvc9AM6cOUMmk7nsOGYrcC1F1eClPLeIiIiIiCxv1ysz9fT0YJom7777Lrt37+a5556jq6uL06dP09vbe9nctNS5ZbHPv6AgaxjGvNufe+45vvGNbzAwMMCDDz7I0aNHKRQKdHZ28rWvfY0nnnhizuB7enqYmppibGyMRCLBjh07+M1vfsPu3bv5/ve/f9lxKMiKiIiIiMhydL0y05kzZ9i0aRP5fJ6GhgYefvhh9u3bR3d39xXlpqXOLYt9/gUvLb6Uzs7O4FeEi6lWqxw9epTf/e533H///cH28fFxDh06dEXjiEQiPPnkk/NOnS+2pTy3iIiIiIgsb9cjM8H5Zcb5fP4juekrX/nKFeWmpc4ti33+q65afLXGx8dxXXfectLvvffevMd8uJS053ns2LGDcrk8Z/uN8uijjzI2NkZ7e7vukxURERERketuoblpuWUmWNzcdMOD7NW4lvY7i2lgYOCyFchEREREREQW23LNTLA4uemGB9nm5mYsywrKR88aGRm54lLSMzMzrFmzZlHHeSWSyeRSD0FERERERD6GFpqbLpaZvsR92IQWfbzzcajxOn9YlNx0w9fFhsNhbrvtNl555ZVgm+d5vPLKK2zZsmXeYyKRCKlUKngsRR+k+VzsRm4REREREZFrsdDcdLHMZBPCNpbo8S8BejFy05IsLX7sscd4+OGHuf3227njjjt49tlnKRQKfPOb31yK4YiIiIiIiCw7yk0XtySVih544AF+9rOf8cMf/pCenh4OHz7MH//4x4/cyHwxv/jFLxZ5hFfmkUcemfO6v7+fbdu2EY/HyWQyPP744ziOszSDExERERGRFe1actNyyUywOLlpQX1kl4MXXniBhx56iFqtdsXHhEIhLMsiFArheR4NDQ10dXUxNDRELpcjn8/jeR61Wu2y5bIvdOFNy7NNi1tbW3nmmWc4d+4cO3bsYOfOnezbt2/B1ykiIiIiInI1LsxMW/kqtrFE98j6NV7lpUXJTSsuyN55551s2rSJX/7yl5fcz7IswuEwsViMRCIBgG3bmKZJOBymrq6O6elpyuUycP4LrVarVCoVarUalUrlsqH2wua+L7/8Mtu3b2doaCj4hWT//v3s2bOHsbExwuHwtV66iIiIiIjIZV2YmZZDkF2M3LSimqBWq1Xeeusttm7detF9TNOkoaGB9vZ2WltbSaVSVKtVSqUShUKBWq1GKBTCcRwSiQThcBjXdfE8j1gsRmNjI42NjTQ1NQUB+GKKxWLw/NChQ2zcuHHONP+9995LNpvl2LFj13ztIiIiIiIil3MlmelGW4zctKKC7GxT4EwmM+/7sViMTCZDY2MjlmXR0dFBS0sLDQ0NfOELX2D16tUkEgnK5TLFYjGYcY1Go0QiEUzTDLbV1dXR1NREJpMhGo3Oe76dO3cGz4eHh+dtVjz7noiIiIiIyGK7XGZaCouRm5akavFiaG1tpbm5maamJnzf59y5c5imSaFQoFKpMDw8jOd5OI4TLBv2PC8IrslkEsMwKBaLxGIxIpEI3d3d9PX1AeA4zkduQD5w4AB9fX2sW7fuhl+viIiIiIjISrAYuWlFzcjONgUeHR2ds72hoYHGxkYAJiYm6OvrI5fLMTAwwPT0NKVSiXK5jGmaVKtVotEo8Xgc3/cJhULk83lWr15NNBolm81iWRa5XI6zZ89SX19PIpGgsbGRUOija8tPnDgBnA/S8zUrnn1PRERERERksV0sMy21652bVlSQnW0KfPDgwWBbJBJh1apVQXDNZrP4vo9hGJRKJTzPIxKJUC6XqdVqdHR0EI1Gqauro6WlBcdxaGho4Ny5cwB0dXURj8dJJpOMjY2Ry+UolUrE43FaW1s/0sy3ra0NgC1btvDOO+/M+Q/z5z//mVQqxfr162/AtyMiIiIiIp9082Wm5eB656YVFWThfFPgX/3qV8Hr+vp6crkcxWKRVatWYRgG4XAY3/fJ5XJUq1Wam5tpb2/HMAwKhQK5XI7R0VEGBweDGdpqtcrk5CT5fJ5IJEIkEmFychIAz/OoVCqEw2Hi8Xhw7i9+8YvceuutANxzzz2sX7+ehx56iLfffps//elPPPHEE+zatYtIJHJDvyMREREREfnk+nBmWmqLkZtWXJB94IEH+PGPfwyAYRgkk0my2Sy1Wo1qtRrMxM4WbvI8j4mJCVpaWohGoxiGQSgUor6+nvb2dhobG4lGozQ0NNDc3MznP/956uvrKZVKVKtVCoUCkUiEUChEtVolnU4HY3nhhReC55ZlceDAASzLYsuWLTz44IPs2LGDp5566oZ/RyIiIiIi8sl1YWZaDhYjN624PrIA2WyWdDpNNBqlpaWFgYEB0uk0dXV1OI5DU1MTlmVx9uzZoL1OJpNhZmYG0zRJpVJ4nodpmkxOThKNRrEsC9u2WbduHRMTExw+fBjbtmltbaVarTI1NRXMyPb39+N53px+SCIiIiIiIsvFbGZabn1kr5cVNyN7oVgsFsy6uq5LoVAgmUzypS99iVgsxr/5N/+GtWvX0tzcjOu6pFKpoDXPbK/YpqYm4vE4p06doq6ujmw2SywW4zOf+Qyf/exng8rGlUqFfD6PYRjY9sem2LOIiIiIiMiKs6ITmWEYQfsc0zRxHIdoNMratWs5deoUp06dYmxsLNgvFAqRy+WwbZvVq1ezefNmXn/9dTzPY3p6mvfffx/btoOgmkwmg5Bcq9WC4BwOh6lWq0t56SIiIiIiIp9YKzrIhkIhXNfFMAwcx8EwDLLZLH/84x+ZnJzE931Wr15NqVSiVCrR2trKP/zDPwRVjYvFIpVKBdd1uemmm5icnMQwDGKxGNlslmKxGBSIchyHdDqN53lEo1Hy+fxSX76IiIiIiMgn0ooOstVqlUgkgmma1Go14vE4uVyO3t5e0uk0DQ0NwbLgkydP8u677wb31YZCISYnJzlz5gwzMzMkEgnWrl1LQ0MD+XyearWKZVmYpsnMzAy2bWNZFtVqFdd1l/rSRUREREREPrFW/D2ylUqFeDxOtVolHo9jGAblcpliscjk5CRTU1OcPHmSYrGI67pYloXneRiGQVtbW/A8l8sxPDwcLEVOJpOsXbuWUqlEIpGgq6uLWq2GYRgKsiIiIiIiIktoRc/IlstlPM8L2unk83laWlqYmJjAsiwAIpEImUyGarWK7/uk02lKpRLFYpHp6WlaWloolUr4vh/0LapUKtx8880UCgXa29uZmpqiWCwGlY5XYKFnERERERGRj40VHWQdxyGZTAbVhFOpFNFolJtvvpliscjZs2eJRqPE43G+8IUvBKF3ZGSEiYkJarUa6XSaVCpFKpViZmaGQqHA2rVree+99xgaGgqqIluWRSwWA1ChJxERERERkSW0ooNsPp9n1apVlMtlqtUq2Ww2KNhUV1fHrbfeysmTJ/nggw84ceIEmUyGjo4O0uk0hmEwPj5ONptlYmKC8fFxmpqa6OzsZHBwkEKhECxDnp2BdRwHx3E0IysiIiIiIrKEVnSQTaVSFAoFEokErusGlYsBarUag4ODpFIpkskkuVyO0dFRarUabW1tRCIRZmZmyOfzQRXjZDJJNpsNPt9xHDzPw7btoIVPpVIJziEiIiIiIiI33ooOsvl8nmw2SzKZpKGhgXK5HITZSCSC67pks1k+/elPc+bMGaanp5mcnAyO8TwvWG7c3t6ObdvMzMxQq9UwTRPLsvB9H8uyqNVqTE9PB/fJioiIiIiIyNJY0UE2FAph2zamaTI9PY3ruti2TTQaxbZtbNvG931yuRxdXV20t7dTqVRobGykoaGBDz74gFAoRDKZpFQqkcvliEQiRCIRfN+nWq1SqVTIZrP4vk8qlcL3fRzHoVAoLPXli4iIiIiIfCKt6CBbKpUAME0zWEJcLpeZmZkhFosRi8UIhUKYponrusTjcRoaGiiVSkxMTNDe3k6tVqNWq+G6LrFYLJjFrdVqlEql4LNDoRCFQoFCoaB7ZEVERERERJbQgtbIPv3002zevJlkMkkmk+H++++nt7d3zj5bt27FMIw5j29/+9tz9unv72fbtm3E43EymQyPP/44juNc9UV4nsf09DTnzp2jVCoRDoep1WpBIafBwUFOnTrF6dOnOX78OAMDAxw9epSTJ09y+vRp3n33XU6ePMmZM2eCz5itglxXV0exWGRkZCS4n1ZERERERGQ+yzUzfdwsaEb24MGD7Nq1i82bN+M4Dj/4wQ+45557OH78OIlEIthv586dPPXUU8HreDwePHddl23bttHa2sobb7zBuXPn2LFjB6FQiH379l3dRfxLMSbXdSmVSsFMaiQSIRqNEovF8H0/KOpUKpUIhUJks1kMwyAajWKaZjBzWyqVqFarc2ZfLcvCtm1qtRqe513VOEVERERE5ONtuWamjxvDv4YpxrGxMTKZDAcPHuTLX/4ycP7XhZ6eHp599tl5j3n55ZfZvn07Q0NDtLS0ALB//3727NnD2NgY4XD4sufNZrOk0+m5F2IY2LYdtMyZrTh84fuWZQVFnGbb6liWFVQ8/nBAnd3Xtm1c16VWq82ZkZ2ZmSGVSl3RdyUiIiIiIp88S52ZtvJVbCN03a5nIRy/xqu8tCi56ZrK787MzADQ2Ng4Z/uvf/1rmpub2bBhA3v37qVYLAbvHTp0iI0bNwZ/EIB7772XbDbLsWPH5j3PbMGlCx8f5vs+tVqNcrmM67pEIpHgPtlIJBKE19l9KpUK1WqVUqlErVYDzs+6zs7izhaMunCGVsuKRURERERkIZZTZvo4uepiT57n8cgjj3DXXXexYcOGYPvXv/71oELwkSNH2LNnD729vbz44osADA8Pz/mDAMHr4eHhec/19NNP86Mf/eiKxzYbPuFfZ2JDoRCWZQVr0IvFIoZhBFP4szOuC1k6rGArIiIiIiIXsxwyk0MNlii2OJyfMFyM3HTVQXbXrl0cPXqU119/fc72b33rW8HzjRs30tbWxt13301fXx/r1q27qnPt3buXxx57LHh96tQpenp6rujY2XY5F7sxevYXkquRy+U+ssRZREREREQElkdmep0/XN3gr6PFyE1XFWS/+93vcuDAAV577TU6Ojouue+dd94JwIkTJ1i3bh2tra28+eabc/YZGRkBoLW1dd7PmO3tOqurqws4X8nrRgfJbDZLZ2cnx48fp729/YaeW0REREREVoZPcmaCxc9NCwqyvu+ze/dufv/73/Pqq6/S3d192WMOHz4MQFtbGwBbtmzhJz/5CT/96U/Zv38/w8PDtLW1kUgkWL9+/RWNwzTP39qbTqeXrNjS6tWrg3GIiIiIiIjA9c1Mo6Oj/Pa3v+WZZ57h7NmzmKZJoVC4onEsh8wEi5ebFlS1+Dvf+Q7PP/88L730ErfcckuwPZ1OE4vF6Ovr4/nnn+e+++6jqamJI0eO8Oijj9LR0cHBgweB8/eidnd3Mzg4yJNPPklbWxvf+973ADhz5gyZTOay45itwLUUVYOX8twiIiIiIrK8Xa/M1NPTg2mavPvuu+zevZvnnnuOrq4uTp8+TW9v72Vz01LnlsU+/4KCrGEY825/7rnn+MY3vsHAwAAPPvggR48epVAo0NnZyde+9jWeeOKJOYPv6elhamqKsbExEokEO3bs4De/+Q27d+/m+9///mXHoSArIiIiIiLL0fXKTGfOnGHTpk3k83kaGhp4+OGH2bdvH93d3VeUm5Y6tyz2+Re8tPhSOjs7g18RLqZarXL06FF+97vfcf/99wfbx8fHOXTo0LzHVCoVKpVK8LpUKrF7927K5fKVD/46qVQq7Nmzh/Hxcerq6rS8WEREREREAtcjM8H5Zcb5fP4juekrX/nKvLlpOWWm2fEsZm666qrFV2t8fBzXdectJ/3ee+/Ne8zFSkn//Oc/X5QxXom/+7u/Y2Bg4LI3bouIiIiIiCzUQnPTcsxMsHi56YYH2avx4VLSMzMzrFmzZglHdF4ymVzqIYiIiIiIiFw0M32J+7AJLcmYHGq8zh8WJTfd8CDb3NyMZVlB+ehZIyMjV1xKerm42Pp3ERERERGRa7HQ3HSxzGQTwjaWJsjyL6usFyM33fAbPMPhMLfddhuvvPJKsM3zPF555RW2bNlyo4cjIiIiIiKy7Cg3XdqSLC1+7LHHePjhh7n99tu54447ePbZZykUCnzzm99ciuGIiIiIiIgsO8pNF7ckJXcfeOABfvazn/HDH/6Qnp4eDh8+zB//+MeP3Mh8Mb/4xS8WeYRX5pFHHpnzur+/n23bthGPx8lkMjz++OM4jrM0gxMRERERkRXtWnLTcslMsDi5aUF9ZJeDF154gYceeoharXZF+xuGQSgUwrZtDMMgGo3S0NBANBrFdV0KhQKjo6P4vk+tVsPzvCsey4XVt2abFre2tvLMM89w7tw5duzYwc6dO9m3b99VXauIiIiIiMhCXZiZtvLVJbtH1vFrvMpLi5KbVlyQvfPOO9m0aRO//OUvL7mfYRiEw2Hi8ficG589z6O+vp5YLMbExASVSmVOr6dcLveRHkwXc2Fz35dffpnt27czNDQU/EKyf/9+9uzZw9jYGOFw+GovWURERERE5IpdmJmWQ5BdjNy0JEuLr1a1WuWtt95i69atF93HMAwSiQRNTU00NzeTSCSwbZtyuRwE1FAohOu6NDQ0YBgGhmFgWRa2bQfHpdNpQqFL/8GLxWLw/NChQ2zcuHHONP+9995LNpvl2LFj13ztIiIiIiIil3MlmelGW4zctKKC7GxT4EwmM+/7iUSC1tZWVq1aRTqd5pZbbuEzn/kM69ato7Ozk1QqRX19PYZhUK1WmZmZAcA0z38Nnufh+z6+79PY2MiqVatIJpNYljXv+Xbu3Bk8Hx4enrdZ8ex7IiIiIiIii+1ymWkpLEZuWpKqxYuhoaGBpqYmWltbiUQijI6OMjAwgGVZmKaJ53k4joPneUxPT2MYBp7nYVkWdXV1GIYRhNhwOBzMyn7wwQdks1mmp6ep1WpzliEfOHCAvr4+1q1bt4RXLiIiIiIisnwtRm5aUTOys02BR0dH52xPp9NBis/lcrz33nuMjIxQKpXI5XJMTEzgeR6RSATf90mlUsRiMeLxOC0tLSQSCSKRCJlMBsdxqNVqTE5OksvlSKfTNDQ00NjYOO/M7IkTJwBobW2dt1nx7HsiIiIiIiKL7WKZaald79y0ooLsbFPggwcPBttm72stl8uMjY0xMjJCtVrFMIygCnFDQwOO42BZFo2NjZRKJarVKqZpcu7cOSYmJqhWq5RKJVpaWmhsbMT3fYaHh3Fdl3w+TywWo7Gx8SNjamtrA2DLli288847c/7D/PnPfyaVSrF+/frF/3JEREREROQTb77MtBxc79y0ooIsnG8K/Ktf/Sp43dTUhOM4VKtV0ul0sDTYNE1c1w1a7DiOE8zQZrNZcrkcMzMzmKZJV1cXQBCEAVKpFJOTk1SrVSqVCqVSibq6OuLxeHDuL37xi9x6660A3HPPPaxfv56HHnqIt99+mz/96U888cQT7Nq1K6iYLCIiIiIistg+nJmW2mLkphUXZB944AF+/OMfA+crFMdiMWZmZiiVSriui+/7lEol8vl8sEzYcRwqlQrhcBjXdYNesk1NTaRSKaanp4lGo9TV1RGJRGhsbCQSiVAoFMjlcsFxlUolKBsN5/szzbIsiwMHDmBZFlu2bOHBBx9kx44dPPXUUzf8OxIRERERkU+uCzPTcrAYuWnF9ZEFyGazpNNpIpEILS0tDA4Okkwmqauro1gs0tjYSGtrK/39/eTzeUKhEKlUinK5DBBULnYch0KhgGVZJBIJ4Hzl41WrVnHo0CEsy6KhoYFyuUy5XMYwDCKRCP39/fi+P6cfkoiIiIiIyHIxm5mWWx/Z62XFzcheKBaLAQTLicvlMqtXr2b79u2sW7eOO+64g5aWFkzTJBqNsmrVKurq6rBtm/r6ejo7O0kmk7iuy8mTJ7Ftm0QiweHDh6mvr+fmm28OKh3ncjnK5TKmaWLbH5tizyIiIiIiIivOik5kFwbKarWK7/skEgkGBwcZHR3F8zxs28YwDGZmZkgmkxQKBYrFIjfddBP/3X/33/Gf//N/JhaL4Xke7733HrFYjEgkQnNzM+fOnSMajeL7PtVqlbq6OjzPIxwOU6vVlvDKRUREREREPrlWdJD1fZ9arYZpmhiGgW3bDA0N0dHRged5TE5OUqvVaGlpCYo19ff3U19fT29vL2fOnAmKQrW2tpJIJAiHw9TV1TExMUGtViOZTDI9PY3rusRiMVzX1YysiIiIiIjIElrRiSwSieB5HoZhUKlUqK+vJ5/P80//9E/EYjF838e2bSqVCv39/UGYvemmm0in0/T19QXbI5EIq1evxrIspqenqVarRCIRXNdlbGyMRCKBbdvB8mIRERERERFZGis6yM621kkkEuRyuaAw0/T0NL7vY5omoVCI/v5+qtUqcL5dz8jICKOjo6xZs4a+vj5M06RcLjMxMUFbWxvNzc20trbS0NDA3//939Pa2kp9fT0AlUqFYrG4hFctIiIiIiLyybaig+zssuJoNEo8HmdmZoa2tjY8zyOVShEOh7EsC9M06e/vxzCMILTOzMwwNTXFF77wBY4fP06xWGTVqlVkMhkqlQqe59Hb24vjONi2zfj4OIZhBNWORUREREREZGms6CDrOA7hcJhCoYBpmsRiMcbGxlizZg1jY2MMDAzQ0NBAY2Mjn/vc52hoaMBxHHp7e7EsC4CGhgZWrVpFKpVifHyc06dP09XVxVtvvUUulwvOEwqFCIVC1Gq1oI2PiIiIiIiI3HgrOsjm83na2tpwHIdarUahUKBQKDAxMUE0GuXTn/40U1NT/NM//ROmadLc3MyaNWtoaWkhl8tRLBb54IMP6O/vx3EcPvWpT5HJZDh69Ciu6wIE/wKYphlUQlbVYhERERERkaWxooNsfX09tVqNeDxOsVgM7oONRCJBv9dwOEwqlSKbzTI+Pk6tVqOzsxPf9xkfH8d1XVzXxbKsYEbX8zx83wcgHA4DBJ9XKBQwDGPJrllEREREROSTbkUH2VwuF7TFqa+vJxqNBmHW8zxOnTpFOByms7OT8fFxJiYmmJ6eplAokE6nqVarGIZBOBxm9erV5PN5stls0HvW9308zwt6yY6MjOC6rqoWi4iIiIiILKEVHWRnZ15n75OdbbcTDoeDXq++71MqlWhtbaW1tZVyuUx9fT3Nzc2cOnWKSCRCOBxmenqacrlMMpkkFApRLpepVCpUKhXy+TyO41BXVwecv2dWlYtFRERERESWxooOsvl8HgDDMEilUsTj8eBe2dmAm0qlsG0bz/OIx+MkEgkcx2F6eppMJkOhUMB1XcLhMKZpUiwWmZ6eplQqUSqVME2TZDJJOBwmm81SKpWCZcciIiIiIiJy4y1ojezTTz/N5s2bSSaTZDIZ7r//fnp7e+fss3Xr1qBNzezj29/+9px9+vv72bZtG/F4nEwmw+OPP35NLW1832dmZoZz585RKBSIRCL4vk+5XGZkZIT+/n7Onj3L6dOnOXHiBMPDw7z//vtMTk4yODjIiRMnGBgYYGBggKGhIWZmZvB9n3g8Tl1dHYVCgeHhYYrFokKsiIiIiIhc1HLNTB83C5qRPXjwILt27WLz5s04jsMPfvAD7rnnHo4fP04ikQj227lzJ0899VTwOh6PB89d12Xbtm20trbyxhtvcO7cOXbs2EEoFGLfvn1XdRGWZWHbNo7jBDOps/e+JhIJ6urq8DwP+NfQC+f/c3ieRyQSwTAMQqEQkUiEarVKuVzGcZwguNq2jWVZVKtVhVkREREREZnXcs1MHzeGfw2pbGxsjEwmw8GDB/nyl78MnP91oaenh2effXbeY15++WW2b9/O0NAQLS0tAOzfv589e/YwNjYWVAm+lGw2SzqdnrPNNM0gkNZqNVzXDcIrnF9+bFkWpmlimiau6wbbHMfB87w5rXZmP9O2bXzfxzRNarXanM+cmZkhlUpd0XclIiIiIiKfPEudmbbyVWwjdN2uZyEcv8arvLQouemayu/Ozmw2NjbO2f7rX/+a5uZmNmzYwN69e+cURjp06BAbN24M/iAA9957L9lslmPHjs17nkqlQjabnfP4MM/zKJVKFItFXNclEomQSCRIJBJEo1Esy8LzPGq1GpVKhVqt9pGZV8uyCIfDxGIxEokElmXhum5wzIUhVkRERERE5HKWU2b6OLnqYk+e5/HII49w1113sWHDhmD717/+dbq6umhvb+fIkSPs2bOH3t5eXnzxRQCGh4fn/EGA4PXw8PC853r66af50Y9+tKCxlUol4F9nYmdDqmVZGIZBsVjEMIxgCt/zvCDUzrbwuRwtMRYRERERkYtZDpnJoQZLFFscasDi5KarDrK7du3i6NGjvP7663O2f+tb3wqeb9y4kba2Nu6++276+vpYt27dVZ1r7969PPbYY8HrU6dO0dPTc0XH+r6P4zgXvTF69heSq5HL5T6yxFlERERERASWR2Z6nT9c3eCvo8XITVcVZL/73e9y4MABXnvtNTo6Oi6575133gnAiRMnWLduHa2trbz55ptz9hkZGQGgtbV13s+IRCJEIpHgdVdXF3C+WNONDpLZbJbOzk6OHz9Oe3v7DT23iIiIiIisDJ/kzASLn5sWFGR932f37t38/ve/59VXX6W7u/uyxxw+fBiAtrY2ALZs2cJPfvITfvrTn7J//36Gh4dpa2sjkUiwfv36KxqHaZ6/tTedTi9ZsaXVq1cH4xAREREREYHrm5lGR0f57W9/yzPPPMPZs2cxTZNCoXBF41gOmQkWLzctqGrxd77zHZ5//nleeuklbrnllmB7Op0mFovR19fH888/z3333UdTUxNHjhzh0UcfpaOjg4MHDwLnS0l3d3czODjIk08+SVtbG9/73vcAOHPmDJlM5rLjmK3AtRRVg5fy3CIiIiIisrxdr8zU09ODaZq8++677N69m+eee46uri5Onz5Nb2/vZXPTUueWxT7/goKsYRjzbn/uuef4xje+wcDAAA8++CBHjx6lUCjQ2dnJ1772NZ544v/f3r3GyFXfef5/n3Pqfuury323jU0YPDbuDDHeDrPIEqytxUhDHiEhMIm0RkyMFWBlGRACBSUmCXmAlF3JGx7APMAKmwjExgpByDM4g3CWDLPG2MYmvnXb7lt1u7ur635O1fk/8PT5u6GN3W23qwt/XlLJVadOnfM71X7yqd/vfL/PTRt8d3c3Y2NjpFIpotEomzdv5je/+Q3btm3j6aefvuw4FGRFRERERGQhulaZqbe3lzVr1pDJZGhoaOCRRx5h586dLFu27IpyU7Vzy3yff9ZLi79OZ2en9yvCpZRKJQ4dOsTvfvc77r//fm/7yMgI+/fvn/EzxWKRYrHovc7n82zbto1CoXDlg79GisUiO3bsYGRkhFgspuXFIiIiIiLiuRaZCS4sM85kMl/JTffcc8+MuWkhZaap8cxnbppz1eK5GhkZoVwuz1hO+ujRozN+5lKlpH/1q1/NyxivxM9//nPOnDlz2Ru3RUREREREZmu2uWkhZiaYv9x03YPsXHy5lPTExARdXV1VHNEF8Xi82kMQERERERG5ZGb6e+7Fh78qY3Kw+ZA/zEtuuu5Btrm5GcuyvPLRU4aGhq64lPRCcan17yIiIiIiIldjtrnpUpnJhx+fUZ0gy3+ssp6P3HTdb/AMBALcfvvt7N2719tWqVTYu3cvPT0913s4IiIiIiIiC45y09erytLip556ikceeYTvfOc73HHHHbzyyitks1l+8IMfVGM4IiIiIiIiC45y06VVpeTuAw88wC9/+Uuef/55uru7OXDgAH/84x+/ciPzpfz617++4nMZhoHP5yMQCBAIBGhsbGTJkiXcdNNNNDc3s3TpUkKhEJZlzXrK+4knnpj2uq+vj02bNhGJREgmk2zfvh3HcWZ1TBEREREREbi63DSbzDTf5iM3zaqP7ELw5ptv8vDDD2Pb9tfuZxgGgUCASCRCMBjEMAwsy8I0TWKxGNFolLGxMUqlErZtY1kWrutSKBTIZrMUi8XLls6+uPrWVNPilpYWXn75ZQYGBti8eTNbtmxh586d1+z6RUREREREvs7FmWk9/1C1e2Qd1+YD3pmX3FRzQXbdunWsWbOGV1999ZL7RCIRYrEYlmUBYFkWlUoF13UxTZPOzk4AQqEQQ0NDpNPpabOxtm3jOA7pdPprA/PFzX3fffdd7rvvPvr7+71fSHbt2sWOHTtIpVIEAoGrvnYREREREZHLuTgzLYQgOx+5qSpLi+eqVCrxySefsH79+hnf9/v9NDc309DQQF1dHcuWLWPx4sXetlgshs/nI51Ok8vlOHXqFGNjY5imiWEYVCoVDMPA7/dTX19PY2MjiUTiks17c7mc93z//v2sXr162jT/xo0bSafTHD58+Jp+DyIiIiIiIjO5XGaqhvnITTUVZKeaAieTya+8FwwGSSaTLFu2jJUrV5JIJBgYGGBgYIB0Ok02myWbzVIoFCiXy+RyOcrlMn6/n0Ag4N1HG4vFCAaD3HTTTaxatYr6+nqam5sJhUJfOeeWLVu854ODgzM2K556T0REREREZL59XWaqlvnITTUVZC9l6iZhn8+HaZr89a9/ZWhoCNu2MU2TQqFAOBz2ejHF43FM0yQcDtPS0sKSJUtIJBLE43Fc1yWbzdLb20s2myUWi1FXV0dDQ8NXZmb37NnDiRMnqnTVIiIiIiIiC9985KaaCrJTQXR4eNjbZpomixYtwnEcRkdHOXXqFNlslnK5jOu6xONxmpqavNnXRCLB6Oiod89soVDg1KlTXkXjcDhMPB5nbGyMVCpFPp8nn8/j9/tpaGj4ypiOHz8OQEtLy4zNiqfeExERERERmW8zZaaF4FrnppoKslNNgfft2wdcqEzc0NCA4zg4jkM8HsdxHAKBwLQCT42Njfzt3/4tExMTVCoVrzKxbdvYtk04HCaRSJDL5QgEAnR2dtLW1kYqlcI0Te/49fX1RCKRaTOzra2tAPT09PDZZ59N+w/z/vvvk0gkWLly5fX9okRERERE5Ib05cy0UFzr3FRTQRYuNAV+/fXXvdfRaJTx8XH8fj+VSgXTNMlms6TTaSYnJxkdHeXcuXPcfPPNdHV1kc/nWbRoEW1tbUSjUa+ycaVSob29Hb/fj+M4rFy50run1u/3e/fU1tXVUalUAPjud7/LbbfdBsCGDRtYuXIlDz/8MJ9++invvfcezz33HFu3biUYDF7370lERERERG5MX85M1TYfuanmguwDDzzAT37yEwB8Ph8AhUKBTCaDYRjeDGtXV5fXq8iyLP785z9TLBapVCoEAgFs2/ZmZguFghd8JyYmyGQyfPTRR9x66620tbVhWRahUIhSqYTf//+Xrn7zzTe955ZlsWfPHizLoqenh4ceeojNmzfz4osvXsdvR0REREREbnQXZ6aFYD5yU831kQVIp9PU1dURiUSor69nYGCAhoYGLMti8eLFfPvb32ZsbIwTJ06QSqWoVCo0NTV5s61TrXjC4TBnzpyht7eXQCCA3+9n5cqV/OUvfyEUCvGtb32LM2fOYJomo6Oj3lLm3t5eyuXytH5IIiIiIiIiC8VUZlpofWSvlZqbkb3YxVPPU/ex1tXVUSqVqK+vJxQK0dbWhs/no1Qq4TgOxWKR4eFh2tra+Pa3v01dXR1tbW0ADA8P85e//IV8Po/P56O3t5dgMEgsFps24zs1EywiIiIiIiLXX00nsqmiS1NLhafCZ319PblcDsdxmJiYIJlMUi6XARgfH8dxHD777DOv4a5lWbS0tNDQ0EBzczPFYpF0Ok0ulyMUCjE4OIjjOMRiMRzHIRgMUiwWq3bdIiIiIiIiN7KaDrJTVYkrlQrlcpmWlhbS6TRHjhyhrq6OXC6H3+9ncnKSs2fPUi6XufXWW8lkMjiOw/r16/k//+f/cPbsWUzTpKWlhUqlgs/nw3VdWlpaMAyDbDbLokWLCIfDZDKZal+2iIiIiIjIDa2mgyxAqVQikUiQTqcpFAp0dHRw7tw5yuUy5XIZwzAYGBjwZmRt2+a2226jXC7zySefMDQ0RCAQ8PrQtra2Eo/HWbx4MbFYjPHxcdatW8e5c+fIZrPTWu+IiIiIiIjI9VfTQdYwDBzHIRKJ0NbWRjAYJB6Ps2TJEsLhMKOjoxQKBZLJJOPj48TjcZqbmzl69CipVIpEIkFXVxelUol0Ok1HRwfBYJByuczQ0BADAwMMDQ1RKpUwTRPDMAgEAgqzIiIiIiIiVVTTQbZcLhMIBMjlcmQyGUKhkHdP7MTEBOl0Gtu2aWho8Nrx2LbN2bNncRwH0zSxLIubb76ZxYsXA3D06FGCwSDj4+OMjo7iOA4Aruvi9/uxbZtcLlfNyxYREREREbmh1XSQzWQydHV1eQWcMpkMlmVx7tw5XNels7OTdDpNb28vvb29nDx5ku7ubrq6ushms1iWRS6X489//jP5fJ6/+Zu/IRAIcOrUKUqlEqVSCcC7Z9Y0TVzX9ZYpi4iIiIiIyPVX02tk4/E4mUyGRCJBIBDAMAwMw/Ba7YyPjxMKhYjFYpTLZUZHR9m/fz/hcJi2tjaKxSJDQ0NkMhkikQiGYTAyMoJhGASDQerr6wkGg95sbDAYJJ/PYxhGtS9dRERERETkhlXTM7L5fN4r8lRXV4fP58O2bVzXxTAMrwVPMpkkFAoxOjpKJpPh//7f/4tpmkxOTmIYBsuXL6e1tZXTp09TKBRoaGigWCxSKBSwLItgMIht2wwODlIul7Esq9qXLiIiIiIicsOq6SAbCAQIBAL4fD6y2Szlchm/308gEMCyLG8pMEBLSwuLFi0il8vR0tJCMBjk3LlzmKZJNBplaGgIy7K8YxYKBUzTJJ/PMzY2huu6hEIhb9Z3cnKyylcvIiIiIiJyY6rpIDsVJg3DIJFIEAqFcF2XiYkJQqEQ0WiUYDDoPVzXJR6PU6lUKJVKNDc3e/fCRiIRgsEgpVKJiYkJJicnyefzuK5LIpHAsiwymQyFQsELxyIiIiIiInL9zeoe2Zdeeom1a9cSj8dJJpPcf//9HDt2bNo+69ev92Ytpx6PPfbYtH36+vrYtGkTkUiEZDLJ9u3bverAczEVXoeHh73qxZVKhXQ6zeDgIH19ffT19XHkyBFOnjxJKpXi1KlTjI6OMjAwwLlz5+jr6+PkyZP09fUxPDxMqVQiGAwSDofJZrOkUikv2IqIiIiIiMxkoWamb5pZzcju27ePrVu3snbtWhzH4dlnn2XDhg0cOXKEaDTq7bdlyxZefPFF73UkEvGel8tlNm3aREtLCx999BEDAwNs3rwZv9/Pzp0753QRlmVhWRaO45DP572CTD6fj0gkQiQSoVAoEI1GcRyHkZERyuUymUzG28/n8xEIBLBtm2KxSLFYJJ/P//9flM+HYRiUy2UqlcqcxikiIiIiIt9sCzUzfdMY7lVMMaZSKZLJJPv27eOuu+4CLvy60N3dzSuvvDLjZ959913uu+8++vv7vd6tu3btYseOHaRSKQKBwGXPm06nqaurm7bNNE1CoRDlctkLm18OnFP3zfp8PhzH8X79qFQqlMtlXNedNuNqWRZ+v9/bViqVpr0/MTFBIpG4/BclIiIiIiI3pGpnpvX8Az7Df82uZzYc1+YD3pmX3HRV7XcmJiYAaGxsnLb9jTfeoLm5mVWrVvHMM8+Qy+W89/bv38/q1au9PwjAxo0bSafTHD58eM5jqVQq5HI5isUilUqFQCBAKBQiHA4TDAbx+S5MPjuOQ6FQwLZt7/7YqSl6y7IIhUIEg0FCodBXZmi1rFhERERERGZjIWWmb5I5F3uqVCo88cQT3Hnnnaxatcrb/uCDD7JkyRLa2to4ePAgO3bs4NixY7z11lsADA4OTvuDAN7rwcHBGc81FSSnTP1n+LqxFQoF77VlWfh8PoLBIJZl4bou2WwWwFtu7Loutm1j2zblcvmKvgMFWxERERERuZSFkJkcbKhSbHGwgfnJTXMOslu3buXQoUN8+OGH07Y/+uij3vPVq1fT2trK3XffzYkTJ1i+fPmczvXSSy/x4x//eK5D9ZYbX/yHnTI+Pj7n405OTn5libOIiIiIiAgsjMz0IX+Y0/GupfnITXMKso8//jh79uzhT3/6Ex0dHV+777p16wA4fvw4y5cvp6WlhY8//njaPkNDQ8CFXq8zeeaZZ3jqqae81+Pj4yxZsoS+vr7rHiTT6TSdnZ0cOXKEtra263puERERERGpDTdyZoL5z02zCrKu67Jt2zbefvttPvjgA5YtW3bZzxw4cACA1tZWAHp6evjpT3/Kz372M3bt2sXg4CCtra1Eo1FWrlw54zGm+sB+WV1dXdWKLbW3t2OaV3WLsYiIiIiIfMNcy8w0PDzMb3/7W15++WXOnTuHaZreLZJfthAzE8xfbppV1eIf/vCH7N69m3feeYdbbrnF215XV0c4HObEiRPs3r2be++9l6amJg4ePMiTTz5JR0cH+/btAy4s8122bBlnz57lhRdeoLW1lR/96EcA9Pb2kkwmLzuOqQpc1agaXM1zi4iIiIjIwnatMlN3dzemafL555+zbds2XnvtNZYsWcLp06c5duzYZXNTtXPLfJ9/VkHWMIwZt7/22mt8//vf58yZMzz00EMcOnSIbDZLZ2cn3/ve93juueemDb67u5uxsTFSqRTRaJTNmzfzm9/8hm3btvH0009fdhwKsiIiIiIishBdq8zU29vLmjVryGQyNDQ08Mgjj7Bz506WLVt2Rbmp2rllvs8/66XFX6ezs9P7FeFSSqUShw4d4ne/+x3333+/t31kZIT9+/df0TiCwSAvvPDCjFPn862a5xYRERERkYXtWmQmuLDMOJPJfCU33XPPPVeUm6qdW+b7/HOuWjxXIyMjlMvlGctJHz16dMbPfLmUdKVSYfPmzRQKhRkrEc+3J598klQqRVtbm+6TFRERERGRa262uWmhZSaY39x03YPsXFxt+535cubMmctWIBMREREREZlvCzUzwfzkpuseZJubm7EsyysfPWVoaOiKS0lPTEzQ1dU1r+O8EvF4vNpDEBERERGRb6DZ5qZLZaa/5158+Od9vDNxsPmQP8xLbrru62IDgQC33347e/fu9bZVKhX27t1LT0/PjJ8JBoMkEgnvUY0+SDO51I3cIiIiIiIiV2O2uelSmcmHH59Rpcd/BOj5yE1VWVr81FNP8cgjj/Cd73yHO+64g1deeYVsNssPfvCDagxHRERERERkwVFuurSqVCp64IEH+OUvf8nzzz9Pd3c3Bw4c4I9//ONXbmS+lF//+tfzPMIr88QTT0x73dfXx6ZNm4hEIiSTSbZv347jONUZnIiIiIiI1LSryU0LJTPB/OSmWfWRXQjefPNNHn74YWzbvqL9DcPAsixM08Tv9+M4DolEgmAwSDqdJhQKkU6nKZfLOI5z2XLZF7v4puWppsUtLS28/PLLDAwMsHnzZrZs2cLOnTvndK0iIiIiIiKzdXFmWs8/4DOqdI+sa/MB78xLbqq5ILtu3TrWrFnDq6+++rX7GYaBz+cjHo97vYt8Ph+VSoWGhgba29s5ceIExWIR0zQplUoUi0UMw2BycpJSqXTZsVzc3Pfdd9/lvvvuo7+/3/uFZNeuXezYsYNUKkUgELjKKxcREREREbm8izPTQgiy85GbaqoJaqlU4pNPPmH9+vVfu184HKauro6Ghgbi8Th+v98Lq4ZhkEgkKBQKLF26lJtvvplKpYLP56OhoYH6+noaGhpoaGggFAp97XlyuZz3fP/+/axevXraNP/GjRtJp9McPnz4qq5bRERERETkSlxpZrqe5iM31UQf2SlTTYGTyeSM7/v9furr6wkGg/h8PhYvXozjOKTTaYLBIKVSCcdxSKVSOI6Dbdu4rutV0XIcB9M0icVi+Hw+xsbG8Pv9ZDKZGZccb9myhd///vcADA4OztiseOo9ERERERGR+Xa5zFQN85GbairIfp1wOExbWxuBQIDOzk4KhQL9/f3Ytk2lUqFcLmMYBoVCgbq6OkzTpFAoYJrmtHLQgUAAy7JYtmwZuVyOv/71r5imSSaToVwuTzvnnj17OHHiBMuXL7/elysiIiIiIlIT5iM31dTS4qmmwMPDw9O2B4NBb/bVdV36+vro6+sjl8vh8/kIh8OYponP5/PWXLuu61XJamtrY8mSJdTV1RGNRslkMpw8eZLJyUmamppobGyksbFxxv5Hx48fB6ClpWXGZsVT74mIiIiIiMy3S2WmarvWuammguxUU+B9+/Z520zTpK2tDcdxmJiYYHx8nNHRUUqlEqZp0tDQQCwWIxqN4rou9fX15HI5LMuiUqmQTqfJ5/NYlkVzczOFQsH7w4+OjjIxMYHjON59t18Os62trQD09PTw2WefTfsP8/7775NIJFi5cuX1+YJEREREROSGNlNmWgiudW6qqSALF5oCv/76697r+vp6yuUy6XSaSCTihU6/308gEKCtrY1isejtXywWKZfLTExM4LoudXV1+Hw+GhsbaWtrwzRNWlpaWLRoEYODg1iW5VU0bmpq8u6/Bfjud7/LbbfdBsCGDRtYuXIlDz/8MJ9++invvfcezz33HFu3bvWqJouIiIiIiMy3L2emapuP3FRzQfaBBx7gJz/5CXChxU40GiWdTgN4M66FQoF0Ok02m+X48eMkEgkSiQSmaZJOp6mrq2Pp0qUEAgEKhQKpVIrjx48zMTFBPB5ncnKS8fFxHMdhfHycYDBIPp+nVCqRSCS8Zr1vvvmmNy7LstizZw+WZdHT08NDDz3E5s2befHFF6//lyQiIiIiIjesizPTQjAfuanm+sgCXhj1+Xy0t7czODhIfX09gUCAUqlEPB6no6OD48ePEw6HicViuK7L5OQktm2TTCan9Yr1+XzcfPPNOI7D+fPnOXv2LK7r8jd/8zeMj4+TTqfJZDIkEglc1+XkyZPA9D6yIiIiIiIiC8VUZlpofWSvlZquWhwKhXBdl1KpRCaTIRaLceutt9LU1ITP5yOVSjE0NMTk5CTNzc1esSfDMFixYgWBQIDTp097haGOHTtGQ0MD+XyexsZGMpmMV/BpYmKCVCpFIpHAMIwZ2/GIiIiIiIjI/KvpIOv3+6f1gnUch8nJSSzLIpfLEY/HvZnYSqXi7XPu3DlvjXYmk8GyLPr7+8lms97+hmEQDAa9Y2QyGerr6zEMA5/Ph23bVb56ERERERGRG1NNB9mpljpTFYj9fj/nz5/HMAwmJiZIJpM4jkNDQwO2bePz+Uin0xSLRf7yl7/Q2NjI+Pi4V6l49erVZLNZb9my67o0NjZy4MABHMehqamJyclJBVkREREREZEqqukga1kWjuNgmib5fJ6uri5GRkbI5/M0NTV5fWUHBgZIpVIA/Kf/9J/w+/2sXLmSyclJBgYGOH78OIZhsHjxYhoaGggGg1iWRSQSIRKJUF9fT1NTE4ZhEAgE8Pv95PP5Kl+9iIiIiIjIjanmqhZfLBgMYts27e3thMNhhoaGWLFiBc3NzUxOTnLq1Cny+Tyjo6PAhSrHo6Oj+P1+2trasCyLfD5PJBLB5/MxPj6O67pYloVlWV6hp6kZ3alKxro/VkREREREpHpqekY2l8th2zaZTIbFixcTCoVoaGigvb2dY8eOeffFLl26lNHRURoaGmhububo0aMcOXIE0zTp6urilltu4ejRo9TX1xMKhTh79iyhUIhIJMLx48cpFouYpukVilKQFRERERERqZ6aDrKlUslruTM+Po5hGKRSKerq6ojH4ziOQyQSIRAI8Hd/93d861vf4uTJk9TX1zM4OOiF00KhwNKlS4nH40xMTLB8+XJGR0cZGhqiWCx6M7RT5ywUClW+chERERERkRtXTS8tzmazRKNRQqEQ5XKZUqlEPp9nZGSEvr4+mpqaaGxs5IsvvuBf//Vfee+994hEInz7298mGAwSDocZGxvj3Llz7N+/n5GREYLBIENDQ2QyGSqVCq7r4rou5XIZx3EANCMrIiIiIiJSRTUdZKPRKNlslkAggGVZXmuccrkMwPnz573+slNtd/7lX/6FQqGA67q0t7czMDDAqVOn6OzsxLZtzp07R11dHZZl4fP5CIfD3vNEIkEul8MwjCpfuYiIiIiIyI2rppcWFwoFstksjuOQSCQolUqUSiUsy8Lv91MqlUin0yxevJiWlhb6+vqYnJxk//79lMtl/vrXvzI2NsbSpUtZvnw5n3/+OY7j4DgOtm17wTgYDOI4Dr29vdi27S0zFhERERERkeuvpoNsIBDA5/MRCATI5XKUy2X8fr+33XVdTNOkXC4TiUS4+eabqVQqNDc3Y5omfX19LF68mHA4zOnTp6f1pPX5fBiGQS6XI5PJ4DgO4XCYQCAAXFjWLCIiIiIiItdfTQfZqTBpmibxeNy7VzadTuPz+bw+sFPFmnw+H6FQiEKhgGVZtLS0UKlUcByHaDSKbdvAhSXJuVyOXC4H4B2jUCh4y5JFRERERESkOmZ1j+xLL73E2rVricfjJJNJ7r//fo4dOzZtn/Xr12MYxrTHY489Nm2fvr4+Nm3aRCQSIZlMsn37dq+Q0lxUKhUmJiYYGhoil8sRCoUASKfTDA4O0tfXx7lz5xgZGeHMmTOMjo7S29vL8PCwt623t5e+vj56e3sZGxujXC4TDocJh8MUCgXGxsbI5/MKsSIiIiIickkLNTN908xqRnbfvn1s3bqVtWvX4jgOzz77LBs2bODIkSNEo1Fvvy1btvDiiy96ryORiPe8XC6zadMmWlpa+OijjxgYGGDz5s34/X527tw5p4swDAO/30+5XPZmUg3DwLIsEokEkUiEQqFAPp+nXC4zPj4OwOTkJAB+vx+fz4ff78dxHCqVCoVCwataDBdmfX0+H6VSaU5jFBERERGRb76Fmpm+aQz3KqYYU6kUyWSSffv2cddddwEXfl3o7u7mlVdemfEz7777Lvfddx/9/f0sXrwYgF27drFjxw5SqZR3D+rXSafT1NXVTds2FTR9Ph+2beM4zrTZU8MwME3TK9Q0df8sXJjRLZfLXqudKVPLkU3T9IpAXfz+xMQEiUTiCr4pERERERG5EVU7M63nH/AZ/mt2PbPhuDYf8M685Karar8zMTEBQGNj47Ttb7zxBs3NzaxatYpnnnnGu9cUYP/+/axevdr7gwBs3LiRdDrN4cOHZzxPsVgknU5Pe3xZpVKhVCp5RZ8CgQDBYJBQKOS153FdF9u2vUexWKRUKlEul70KxZFIhHg8Tjgc9kJxPp/Htm0tKxYRERERkVlZSJnpm2TOxZ4qlQpPPPEEd955J6tWrfK2P/jggyxZsoS2tjYOHjzIjh07OHbsGG+99RYAg4OD0/4ggPd6cHBwxnO99NJL/PjHP57V2IrFovd6aqZ26gF4/1Gmpvcdx6FcLnvB9UpCq4KtiIiIiIhcykLITA42VCm2OFwopjsfuWnOQXbr1q0cOnSIDz/8cNr2Rx991Hu+evVqWltbufvuuzlx4gTLly+f07meeeYZnnrqKe/1qVOn6O7uvuLPTy0LnsnV3PM6OTn5lSXOIiIiIiIisDAy04f8YW6Dv4bmIzfNKcg+/vjj7Nmzhz/96U90dHR87b7r1q0D4Pjx4yxfvpyWlhY+/vjjafsMDQ0B0NLSMuMxgsEgwWDQe71kyRLgQiWv6x0k0+k0nZ2dHDlyhLa2tut6bhERERERqQ03cmaC+c9Nswqyruuybds23n77bT744AOWLVt22c8cOHAAgNbWVgB6enr46U9/ys9+9jN27drF4OAgra2tRKNRVq5ceUXjmCrSVFdXV7ViS+3t7d44RERERERE4NpmpuHhYX7729/y8ssvc+7cOUzTJJvNXtE4FkJmgvnLTbOqWvzDH/6Q3bt3884773DLLbd42+vq6giHw5w4cYLdu3dz77330tTUxMGDB3nyySfp6Ohg3759wIVS0suWLePs2bO88MILtLa28qMf/QiA3t5eksnkZccxVYGrGlWDq3luERERERFZ2K5VZuru7sY0TT7//HO2bdvGa6+9xpIlSzh9+jTHjh27bG6qdm6Z7/PPKsgahjHj9tdee43vf//7nDlzhoceeohDhw6RzWbp7Ozke9/7Hs8999y0wXd3dzM2NkYqlSIajbJ582Z+85vfsG3bNp5++unLjkNBVkREREREFqJrlZl6e3tZs2YNmUyGhoYGHnnkEXbu3MmyZcuuKDdVO7fM9/lnvbT463R2dnq/IlxKqVTi0KFD/O53v+P+++/3to+MjLB///4ZP1MsFqdVIc7n82zbto1CoXDlg79GisUiO3bsYGRkhFgspuXFIiIiIiLiuRaZCS4sM85kMl/JTffcc8+MuWkhZaap8cxnbppz1eK5GhkZoVwuz1hO+ujRozN+5lKlpH/1q1/NyxivxM9//nPOnDlz2Ru3RUREREREZmu2uWkhZiaYv9x03YPsXHy5lPTExARdXV1VHNEF8Xi82kMQERERERG5ZGb6e+7Fh78qY3Kw+ZA/zEtuuu5Btrm5GcuyvPLRU4aGhq64lPRCcan17yIiIiIiIldjtrnpUpnJhx+fUZ0gy3+ssp6P3HTdb/AMBALcfvvt7N2719tWqVTYu3cvPT0913s4IiIiIiIiC45y09erytLip556ikceeYTvfOc73HHHHbzyyitks1l+8IMfVGM4IiIiIiIiC45y06VVpeTuAw88wC9/+Uuef/55uru7OXDgAH/84x+/ciPzpfz617+e5xFemSeeeGLa676+PjZt2kQkEiGZTLJ9+3Ycx6nO4EREREREpKZdTW5aKJkJ5ic3zaqP7ELw5ptv8vDDD2Pb9hV/xrIs7xGJRCiVSriuS6VSwe/3UywWcRxn1l/exdW3ppoWt7S08PLLLzMwMMDmzZvZsmULO3funNVxRURERERE5urizLSef6jaPbKOa/MB78xLbqq5ILtu3TrWrFnDq6++etl9/X4/8Xgc0zTx+/1e76JgMEhLSwv9/f3kcjmi0SjpdBrbtnFdl1wuR7lcvuzxL27u++6773LffffR39/v/UKya9cuduzYQSqVIhAIXMVVi4iIiIiIXJmLM9NCCLLzkZuqsrR4rkqlEp988gnr16//2v3C4TD19fU0NjaSSCSIxWIYhoHjOJimSUtLC5Zl0dnZya233orrukQiEZqbm1mxYgWNjY3U19djWdbXnieXy3nP9+/fz+rVq6dN82/cuJF0Os3hw4ev6rpFRERERESuxJVmputpPnJTTfSRnTLVFDiZTM74vs/no7GxkVAohGma1NXVYVkWqVSKUCiEZVk4jsPY2BiFQgHHcbAsi0qlQj6fJ5fLYRgGsVgMuDCjm81mp33xF9uyZQu///3vARgcHJyxWfHUeyIiIiIiIvPtcpmpGuYjN9XUjOzXCYfDdHV1sWjRIlavXk17e7sXWuFCqWqAfD5PpVIhFArhuq53b2wwGCSRSBAMBqmvr2fVqlXccsstNDQ0UF9f7y1LvtiePXs4ceLEdb1OERERERGRWjIfuammguxUU+Dh4eFp2wOBAF1dXbiui23bDA4O0t/fz/j4OH6/n+bmZiKRCK7rEo1GgQsFoKLRKG1tbTQ2NpJMJlm0aBH19fXk83lOnjyJ3++nvb2dhoYGkskkPt9XJ7CPHz8OQEtLy4zNiqfeExERERERmW+XykzVdq1zU00F2ammwPv27fO2maZJR0cH+XyesbEx0uk0Z86coVgskkgkiMfjTE5OEggEqFQqxGIxKpWKF3pTqRSVSoX29naKxSLZbBbbthkdHWVwcJDx8XEsyyIcDhOPxzEMY9qYWltbAejp6eGzzz6b9h/m/fffJ5FIsHLlyuvzBYmIiIiIyA1tpsy0EFzr3FRTQRYuNAV+/fXXvddT1a9GRkaIRqMYhoHP58Pvv1CZq7e3F9u2KZfL1NXVkcvlCIfDFItFKpUKyWTSC7ttbW1UKhXa2tpoamqiv78f0zSZnJzk/PnzJJNJgsGgd+7vfve73HbbbQBs2LCBlStX8vDDD/Ppp5/y3nvv8dxzz7F169ZpnxEREREREZlPX85M1TYfuanmguwDDzzAT37yE+91fX09IyMj+Hw+TNMkHA5j2zaTk5PU19dz++23A2DbNrZt4zgOrusSj8exLIt8Ps/w8DBjY2MMDg5imiZ9fX0cPXrUC7CBQIByuUyxWPSWJsOF/kxTLMtiz549WJZFT08PDz30EJs3b+bFF1+8fl+OiIiIiIjc8L6cmaptPnJTzfWRBUin015F4ptuuokzZ87Q0NDgVSCOx+M4jkMulyMej3P+/HnC4TCNjY3kcjkSiQTj4+PeMmHTNOnq6vK2nTp1imKxSHt7O6VSiXA4TCaTIR6PMz4+ztmzZ4HpfWRFREREREQWiqnMtND6yF4rNdV+58sCgQC2bVMqlchkMgSDQf72b/+WcDhMoVDg6NGjZDIZYrEY7e3tDA8PYxgGTU1NNDU1EQ6HOXnyJGNjYwQCAQYGBrxWPX/3d39HNpulUCiQSCS8NdwzVS8WERERERGR66fmg+zFlYQty6KxsRHTNBkcHCSRSJBMJvH7/eTzeWKxGLZtc+7cOdra2ojFYrS1tRGJRDh9+rTXqieTyXDmzBl8Ph/xeJxUKsX4+DiBQADLsjBN02vnIyIiIiIiItdXTQdZn8+H4ziYpkmpVGLRokUcPnyYQCDA+Pg4Pp+PXC6HaZpkMhlc16VYLDI0NOTtY9u2994tt9xCJpMBLvSlBWhoaGBwcBDLsmhoaPBa+hSLxWpeuoiIiIiIyA2rpoOs3+/Htm2CwSD5fJ5EIsHAwABwYba2oaEBgC+++IJ0Oo1hGNx2220sWbKEm266iXQ6zbFjxzh58iRwoXBUMpnEsiwMwyAYDFIqlVizZg19fX2USiVCoRA+n09BVkREREREpEpqOsj6fD4KhQJLly5lfHyciYkJbrrpJm/WdWBgAMMwyGazAESjUcLhMMFgkFgsxtjYGHV1dUQiEfL5PNlslkqlgmma5HI5isUi58+fp1Qq4bqu19qnButjiYiIiIiIfGPUdJAtFou4rsvIyAh1dXW0t7cTi8WIRCI4joPf7yeTydDU1MTp06dJJpM4jsO///u/c/DgQaLRKO3t7axYsQLTNIlGo4yPj3P+/Hlc16Wjo4OhoSEKhQKmaRIMBqlUKjiOU+1LFxERERERuWHVdJC1bZtIJOLNnE7d+xqNRuns7KRUKtHV1cXExAQ9PT10dHRgGAaTk5OkUikMw6BYLGIYBosWLeLs2bMYhkFbWxu5XI7+/n6y2SyO4xAIBHBdd1pxKREREREREbn+ajqVpdNpEokElUqFYrGI4zhUKhUqlQrHjh2jtbWVXC7HF198geM4rFixgjvuuIP//J//M//6r/9KQ0MDuVyOyclJzpw5w3/5L/8Fx3H4t3/7NwqFApVKxVtS7DgOPp+PcrlMuVyu9qWLiIiIiIjcsGo6yFqWRT6fp6GhgfPnz3tFmiqVCsFgkHK5jG3bJBIJRkdHOXXqFMPDw/T09BAIBAgGgxw9epSJiQm+853v8MUXX1CpVAiHw5TLZQqFAj6fD8MwsCyLQCDAyMgIhmFU+9JFRERERERuWDUdZA3D4Pz58wBEIhGvHY9lWZTLZcbHx4ELLXTa29v561//ysTEBH/5y19IJBKcOXOGdDrtVSqeqnjs9/u9mdhgMIjrulQqFQYGBrBtG8uyqnXJIiIiIiIiN7yaDrI+n8+7dzWTyVAsFgmHw/j9fq+68NSjVCqxdOlSXNclFouRSCTw+/0sWrSIcDjs9YqdmtGd+vzk5CS5XI5KpUIkEiEajVIul5mcnKz25YuIiIiIiNyQajrI5nI5799YLEYsFqNcLns9YxOJBLFYDMuyvLY60WgUx3HIZDI0Njbiui62bXvbHcehWCwyOTnJ5OQkhmF4x8jn82QyGbXfERERERERqSJzNju/9NJLrF27lng8TjKZ5P777+fYsWPT9lm/fj2GYUx7PPbYY9P26evrY9OmTUQiEZLJJNu3b7+qljaVSoV0Os3w8DC5XA6/349pmqTTaYaGhjh9+jRDQ0OMj49z6tQp8vk8/f399Pf3Mzg4yKlTp+jv7+fcuXMMDQ0xMjJCoVAgFAoRDofJ5/OMjIyQzWYVYkVERERE5JIWamb6ppnVjOy+ffvYunUra9euxXEcnn32WTZs2MCRI0eIRqPeflu2bOHFF1/0XkciEe95uVxm06ZNtLS08NFHHzEwMMDmzZvx+/3s3LlzThdhmqZ3f2wulyOXy2GaJpZlEY1GCYfDuK5LoVDAdV3OnTvnzdC6rksgEMAwDAKBAOVymXw+T7FYpFwue8HVsixM08S27TmNUUREREREvvkWamb6pjHcq5hiTKVSJJNJ9u3bx1133QVc+HWhu7ubV155ZcbPvPvuu9x333309/ezePFiAHbt2sWOHTtIpVIEAoHLnjedTlNXVzdt21Rw9fv92LZNuVymUqlM28eyLO8+2KliTnBhRncqtF78dUwdb6r9juM4096fmJggkUhc/osSEREREZEbUrUz03r+AZ/hv2bXMxuOa/MB78xLbprV0uIvm5iYAKCxsXHa9jfeeIPm5mZWrVrFM888493LCrB//35Wr17t/UEANm7cSDqd5vDhwzOep1gskk6npz2+rFKpYNu2V5jJ7/cTCoUIBoP4/X4sy/Luhy0Wi5RKJYrFotd/Fi4E12Aw6C0p9vl82LZNPp/Htm0tKxYRERERkVlZSJnpm2TOxZ4qlQpPPPEEd955J6tWrfK2P/jggyxZsoS2tjYOHjzIjh07OHbsGG+99RYAg4OD0/4ggPd6cHBwxnO99NJL/PjHP77isZXLZcrlsvf64plVn+/CJU/9R4nH4wBewHUcZ9pnv46CrYiIiIiIXMpCyEwONlQptjhcuC1zPnLTnIPs1q1bOXToEB9++OG07Y8++qj3fPXq1bS2tnL33Xdz4sQJli9fPqdzPfPMMzz11FPe61OnTtHd3X3Fn/9ysL3YVK/ZuZicnPzKEmcRERERERFYGJnpQ/4wt8FfQ/ORm+YUZB9//HH27NnDn/70Jzo6Or5233Xr1gFw/Phxli9fTktLCx9//PG0fYaGhgBoaWmZ8RjBYJBgMOi9XrJkCXChktf1DpLpdJrOzk6OHDlCW1vbdT23iIiIiIjUhhs5M8H856ZZBVnXddm2bRtvv/02H3zwAcuWLbvsZw4cOABAa2srAD09Pfz0pz/lZz/7Gbt27WJwcJDW1lai0SgrV668onGY5oVbe+vq6qpWbKm9vd0bh4iIiIiICFzbzDQ8PMxvf/tbXn75Zc6dO4dpmmSz2Ssax0LITDB/uWlWVYt/+MMfsnv3bt555x1uueUWb3tdXR3hcJgTJ06we/du7r33Xpqamjh48CBPPvkkHR0d7Nu3D7iwzHfZsmWcPXuWF154gdbWVn70ox8B0NvbSzKZvOw4pipwVaNqcDXPLSIiIiIiC9u1ykzd3d2Ypsnnn3/Otm3beO2111iyZAmnT5/m2LFjl81N1c4t833+WQXZqXY1X/baa6/x/e9/nzNnzvDQQw9x6NAhstksnZ2dfO973+O5556bNvju7m7GxsZIpVJEo1E2b97Mb37zG7Zt28bTTz992XEoyIqIiIiIyEJ0rTJTb28va9asIZPJ0NDQwCOPPMLOnTtZtmzZFeWmaueW+T7/rJcWf53Ozk7vV4RLKZVKHDp0iN/97nfcf//93vaRkRH2798/42em2uRMyefzbNu2jUKhcOWDv0aKxSI7duxgZGSEWCym5cUiIiIiIuK5FpkJLiwzzmQyX8lN99xzz4y5aSFlpqnxzGdumnPV4rkaGRmhXC7PWE766NGjM37mUqWkf/WrX83LGK/Ez3/+c86cOXPZG7dFRERERERma7a5aSFmJpi/3HTdg+xcfLmU9MTEBF1dXVUc0QVTPWhFRERERESq6VKZ6e+5Fx/+qozJweZD/jAvuem6B9nm5mYsy/LKR08ZGhq64lLSC8Wl1r+LiIiIiIhcjdnmpktlJh9+fEZ1giz/scp6PnLTdb/BMxAIcPvtt7N3715vW6VSYe/evfT09Fzv4YiIiIiIiCw4yk1fryqVip566ileffVV/umf/onPP/+cf/zHfySbzfKDH/zgij7/61//ep5HeGWeeOKJaa/7+vrYtGkTkUiEZDLJ9u3bcRynOoMTEREREZGadjW5aaFkJpif3FSVe2QfeOABUqkUzz//PIODg3R3d/PHP/7xKzcyz+TNN9/k2WefndX5LMvCNE1vqr1SqRAIBCgUCoTDYXK5HLZt47ruZauMXezFF1/0npfLZTZt2kRLSwsfffQRAwMDbN68Gb/fz86dO2c1XhERERERkbnmprlkpvk0H7lpVn1kF4J169axZs0aXn311cvuGwwGCYVCWJaFz+fDsiwAQqEQgUCAXC5HqVTCsiyKxSKu6+I4DtlslnK5fNnjX9wT6d133+W+++6jv7/f+4+1a9cuduzYQSqVIhAIXMVVi4iIiIiIXJmLM9N6/qFq98g6rs0HvDMvuammmqCWSiU++eQT1q9f/7X7hUIhGhoaqKuro76+nrq6Oq9vUTgcZunSpXR0dLBs2TJWr15NY2Mj4XCYaDRKe3s7DQ0NNDY2esH3UnK5nPd8//79rF69etqvIxs3biSdTnP48OG5X7SIiIiIiMgVutLMdD3NR26qifY7U6Z6KSWTyRnftyyLtrY2TNPEdV2i0Sg+n490Ok0oFMLv95PP5zl9+jRwYYlxOBzGNE0cx6FcLuP3+4nH45imic/nI5fLkc1mZ1xyvGXLFn7/+98DMDg4OGOPp6n3RERERERE5tvlMlM1zEduqqkg+3X8fj9dXV0Eg0Ha29vJ5/OcP3+eiYkJHMehUqkAF0o/BwIBbNvGcRwmJiZwXZdAIEAgECAYDBKJRGhoaODMmTP4/X4ikQijo6NfWW68Z88eTpw4wfLly6txySIiIiIiIgvefOSmmlpaPNVLaXh4eNp2n89HZ2enN2s6OTlJX18f6XQagGg0SiwWw+/3E4vFCAQC+Hw+EokELS0tLFq0iGQySVNTE8FgkLGxMQYHB+no6KCpqYlIJMKiRYu85ckXO378OAAtLS0z9niaek9ERERERGS+XSozVdu1zk01FWSneint27dv2va2tjYqlQrnz58nnU5z5swZyuUyzc3N5PN5YrEYkUgE13Xx+/2Uy2V8Ph/FYpHJyUlyuRyxWMybuS2VSpw5c4be3l5s2yYejxMOh0kkEvj902+Ubm1tBaCnp4fPPvts2n+Y999/n0QiwcqVK+f/yxERERERkRvepTJTtV3r3FRTQRYu9FJ6/fXXvdfRaBS/38/4+DiBQADLsqhUKliWRSAQYM2aNRiGQbFYJB6P4/f76ejo8FrxNDU10djYSLFYxOfz4ff7Wbx4MdFolMHBQUKhEGNjY6TTaRYtWoRhGN65v/vd73LbbbcBsGHDBlauXMnDDz/Mp59+ynvvvcdzzz3H1q1bvXOJiIiIiIjMty9npmqbj9xUc0H2gQce4Cc/+Yn3uqGhgVQqhWEY+P1+HMfBcRzy+Tznzp3j008/pbm5Gdu2GRsbo1KpMDo6it/vx7IsYrEYmUzGu5c2nU6TzWbp7+8nn89jmibhcJh8Po9hGITDYe/cb775pvfcsiz27NmDZVn09PTw0EMPsXnz5mk9k0RERERERObblzNTtc1Hbqq5PrIA6XTaa6lz0003MTIyQiwWAy4Uc+rq6mJsbIyhoSFisRgdHR309fVhWZbXQ3ZyctLrLZvP52lra2NycpJYLMbw8DDj4+O0trZ6lY+/+OILGhoamJyc9KppXdwPSUREREREZKGYykwLrY/stVJzM7IX8/v9uK5LsVgkGo3iOA5NTU20tbXR3d1NKBSiVCrhOA5LlizxliEvXbqUW2+9leXLlxMIBMhms5w/f55MJsMXX3yBaZrcfPPNLF68mHw+7xWLKpVK1b5kERERERGRG15NB1nLsiiVShSLRW/GNRKJYNs2n376KYFAgMWLF7NixQr8fr/3K0BfXx/FYpGOjg4WLVpER0cHiUSCVCrF5OQk2WwWy7I4d+4cgUCAQ4cO0d/fD4BpmtPukxUREREREZHrq6b7yAYCAUzT9AJtLBZjfHycXC6HbduUSiXy+TwHDx5kbGyMUChEJpNhfHyc7u5uTpw4QT6fZ3JyEsdxuPXWW8nlcgQCAdLpND6fj2AwyOLFiymVSkQiEdLpNJZl4ThOtS9fRERERETkhlTTQdbn8+G6LolEgrGxMZLJJAMDAxSLRcrlMk1NTTiOw8mTJ8nlchiGQWdnJ2vXrmX16tWkUin+3//7f5w+fZpyuczY2Bitra1ks1l8Ph8+n4+xsTFuvvlmisUitm0TiUTw+XwKsiIiIiIiIlVS00E2FApRqVRYsWIFpVKJW2+9lYaGBq9dTiaT8frCuq5LXV0d4XCYlpYWstksIyMjJBIJotEomUwG27YxDAOfz0ehUCAej2NZFgcOHPC2l8vlal+2iIiIiIjIDa2mg6xt21iWRX9/P67r8s///M/E43ECgQCBQID6+npc16WxsZFTp07R3NzM0qVLOXDgANlslng8Tjwep7Gxkc7OToLBIGNjY+Tzee9zExMTZDIZAoEArutiGAY1WOhZRERERETkG6Omg2yhUKC+vp5sNovrukxMTHD+/HlisRgrVqwgm83S0dFBV1cXy5YtIxgMcuDAAWzbxnVdSqUS6XSarq4u/H4/Q0NDGIZBfX09fr+fwcFBstksjuNQLpepVCoEAgEqlUq1L11EREREROSGVdNBdnJykubmZgKBAIVCgUqlgm3bZDIZ+vr6aGtro6+vj9OnT3PkyBEWL15MR0cH3/rWtzh06BDNzc0YhsHnn39OQ0MDK1asYGhoiFQqRT6fp1wuYxgGwWCQSqWCYRjedhEREREREamOmm6/EwgEyGQyhMNhTNMkGAxiWRaGYZDNZunv76dUKjE0NESxWGRycpKjR49y/vx5vvWtb5FOp/n88885f/48yWSS0dFRHMehUqnguq5XERku3I/r8/m8olEiIiIiIiJSHTU9I1upVLzZ08bGRorFIqVSCcuyKJfL3ixtPB6np6eH48ePMzQ0xL/927/R0NBAKpWiUqnQ2NjI+Pg46XQagHA4jOu62LaNz3fhK5pahjx1fBEREREREamOmg6yPp+PUChEJBJhfHwc27aJxWL4/X78fj+u63pVi9PpNC0tLdTV1RGLxYhEIkQiEe84hULB+0y5XPZmY7PZLJlMBrgQcMPhMJVKhcnJyWpeuoiIiIiIyA2rpoNsLpcDLtwrm0gkSCQSFItFcrkcwWCQSCSC3+8nHA57fWFDoRD5fJ5MJkN9fb133+vULG65XCaTyZBOpykUCpim6RV/mpiY8ApLiYiIiIiISHXM6h7Zl156ibVr1xKPx0kmk9x///0cO3Zs2j7r16/HMIxpj8cee2zaPn19fWzatIlIJEIymWT79u04jnNVFzIxMcHg4CD5fN6bNZ2YmGB4eJi+vj7OnTvH4OAgvb29OI7D+fPnGR8fZ2hoiNHRUfr7+zl58iRnz55lZGQE13WJxWLE43EymYx3bIVYERERERG5lIWcmb5JZjUju2/fPrZu3cratWtxHIdnn32WDRs2cOTIEaLRqLffli1bePHFF73XU0t4AcrlMps2baKlpYWPPvqIgYEBNm/ejN/vZ+fOnXO7CJ8Py7KwbZt8Pk8+n8cwDHw+n7eE2HEcbNumXC7T39+PYRiMj4/j9/u92dqmpiaKxSLFYpFCoTBt9tU0Tfx+P7Ztq/2OiIiIiIjMaKFmpm8aw72KKcZUKkUymWTfvn3cddddwIVfF7q7u3nllVdm/My7777LfffdR39/P4sXLwZg165d7Nixg1QqRSAQuOx50+k0dXV107aZpukF0nK5PGPgtCzLq2p8ceXhSqWC4zi4rjttxnUqvE6F5Kl9pkxMTJBIJC47XhERERERuTFVOzOt5x/wGf5rdj2z4bg2H/DOvOSmq2q/MzExAUBjY+O07W+88QbNzc2sWrWKZ555xruXFWD//v2sXr3a+4MAbNy4kXQ6zeHDh+c8lqmiTrlcjnK5jN/vJxQKEQwGvTA6VYl4asZ16mHbNnAhuAYCAUKhELFYDJ/Ph23b5HI5bNvWsmIREREREZmVhZSZvknmXOypUqnwxBNPcOedd7Jq1Spv+4MPPsiSJUtoa2vj4MGD7Nixg2PHjvHWW28BMDg4OO0PAnivBwcHZzzX1HLfKVP/GS7FcZxp68d9Pp83Y2tZFqZpepWIY7EYhmHgOA6lUsnrI3slFGxFRERERORSFkJmcrChSrHF4cKE4XzkpjkH2a1bt3Lo0CE+/PDDadsfffRR7/nq1atpbW3l7rvv5sSJEyxfvnxO53rppZf48Y9/PNeheqF2aub1YlO9Y+dicnLyK0ucRUREREREYGFkpg/5w5yOdy3NR26aU5B9/PHH2bNnD3/605/o6Oj42n3XrVsHwPHjx1m+fDktLS18/PHH0/YZGhoCoKWlZcZjPPPMMzz11FPe6/HxcZYsWUJfX991D5LpdJrOzk6OHDlCW1vbdT23iIiIiIjUhhs5M8H856ZZBVnXddm2bRtvv/02H3zwAcuWLbvsZw4cOABAa2srAD09Pfz0pz9leHiYZDIJwPvvv08ikWDlypUzHiMYDBIMBr+yva6urmrFltrb2zHNq7rFWEREREREvmGUmaabr9w0qyC7detWdu/ezTvvvEM8HvfWZ9fV1REOhzlx4gS7d+/m3nvvpampiYMHD/Lkk09y1113cdtttwGwYcMGVq5cycMPP8wvfvELBgcHee6559i6deuMX7yIiIiIiEitUGa6PmbVfufiljUXe+211/j+97/PmTNneOihhzh06BDZbJbOzk6+973v8dxzz037FaC3t5d//Md/5IMPPiAajfLII4/ws5/9DJ/vynL1VCnparS/qea5RURERERkYVNmuj7nn/XS4q/T2dnJvn37LnucJUuW8Ic/zP2m42AwyAsvvFCVXyOqeW4REREREVnYlJmuz/lnNSMrIiIiIiIiUm2qViQiIiIiIiI1RUFWREREREREaoqCrIiIiIiIiNQUBVkRERERERGpKTUZZP/n//yfLF26lFAoxLp16/j444+v6ngvvfQSa9euJR6Pk0wmuf/++zl27Ni0fdavX49hGNMejz322LR9+vr62LRpE5FIhGQyyfbt23Ec56rGJiIiIiIiMlvXOjPBwspNNRdk33zzTZ566ileeOEF/v3f/501a9awceNGhoeH53zMffv2sXXrVv785z/z/vvvY9s2GzZsIJvNTttvy5YtDAwMeI9f/OIX3nvlcplNmzZRKpX46KOP+Kd/+idef/11nn/++TmPS0REREREZLbmIzPBwspNNdd+Z926daxdu5b/8T/+BwCVSoXOzk62bdvG008/fU3OkUqlSCaT7Nu3j7vuugu48MtCd3c3r7zyyoyfeffdd7nvvvvo7+9n8eLFAOzatYsdO3aQSqUIBALXZGwiIiIiIiJf53pkJqhubqqpGdlSqcQnn3zCPffc420zTZN77rmH/fv3X7PzTExMANDY2Dht+xtvvEFzczOrVq3imWeeIZfLee/t37+f1atXe38MgI0bN5JOpzl8+PA1G5uIiIiIiMilXK/MBNXNTb6rHPt1NTIyQrlcnnbRAIsXL+bo0aPX5ByVSoUnnniCO++8k1WrVnnbH3zwQZYsWUJbWxsHDx5kx44dHDt2jLfeeguAwcHBGcc19Z6IiIiIiMh8ux6ZCaqfm2oqyF4PW7du5dChQ3z44YfTtj/66KPe89WrV9Pa2srdd9/NiRMnWL58+fUepoiIiIiISNVUOzfV1NLi5uZmLMtiaGho2vahoSFaWlqu+viPP/44e/bs4V/+5V/o6Oj42n3XrVsHwPHjxwFoaWmZcVxT74mIiIiIiMy3+c5MsDByU00F2UAgwO23387evXu9bZVKhb1799LT0zPn47quy+OPP87bb7/NP//zP7Ns2bLLfubAgQMAtLa2AtDT08Nnn302rRLY+++/TyKRYOXKlXMem4iIiIiIyJWar8wECys31VzV4jfffJNHHnmE//W//hd33HEHr7zyCv/7f/9vjh49+pW11lfqhz/8Ibt37+add97hlltu8bbX1dURDoc5ceIEu3fv5t5776WpqYmDBw/y5JNP0tHRwb59+4ALZaS7u7tpa2vjF7/4BYODgzz88MP8t//239i5c+c1uXYREREREZHLmY/MBAssN7k16Fe/+pXb1dXlBgIB94477nD//Oc/X9XxgBkfr732muu6rtvX1+feddddbmNjoxsMBt0VK1a427dvdycmJqYd5/Tp0+5//a//1Q2Hw25zc7P73//7f3dt276qsYmIiIiIiMzWtc5MrruwclPNzciKiIiIiIjIja2m7pEVERERERERUZAVERERERGRmqIgKyIiIiIiIjVFQVZERERERERqioKsiIiIiIiI1BQFWREREREREakpCrIiIiIiIiJSUxRkRUREREREpKYoyIqIiIiIiEhNUZAVERERERGRmqIgKyIiIiIiIjVFQVZERERERERqyv8HZ7ocypM+JJIAAAAASUVORK5CYII=\n",
      "text/plain": [
       "<Figure size 2000x2000 with 80 Axes>"
      ]
     },
     "metadata": {},
     "output_type": "display_data"
    }
   ],
   "source": [
    "final_test_num = 40\n",
    "plt.figure(figsize=(20,20))\n",
    "for index in range(final_test_num):\n",
    "    img_decode = load_test(final_test[index])\n",
    "    img_decode_ex = tf.expand_dims(img_decode,0)\n",
    "    pred_mask = model.predict(img_decode_ex)\n",
    "    pred_mask = tf.argmax(pred_mask, axis=-1)\n",
    "    pred_mask = pred_mask[...,tf.newaxis]\n",
    "\n",
    "    plt.subplot(final_test_num,2,index*2+1)\n",
    "    plt.imshow(img_decode)\n",
    "    plt.subplot(final_test_num,2,index*2+2)\n",
    "    plt.imshow(pred_mask[0])"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": null,
   "id": "d0dc2242",
   "metadata": {},
   "outputs": [
    {
     "name": "stdout",
     "output_type": "stream",
     "text": [
      "training  4  epoch: waiting......\n",
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      "the  4  result: \n",
      "Epoch 4, Loss: 0.00, Accuracy: 99.91,                 IOU: 0.905, Test Loss: 0.00,                 Test Accuracy: 99.92, Test IOU: 0.912\n",
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      "the  4  result: \n",
      "Epoch 4, Loss: 0.00, Accuracy: 99.93,                 IOU: 0.925, Test Loss: 0.00,                 Test Accuracy: 99.93, Test IOU: 0.921\n",
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     ]
    }
   ],
   "source": [
    "#再训练两个epoch\n",
    "EPOCHS = 5\n",
    "epoch = 3\n",
    "\n",
    "train_iou = MeanIOU(3, name='train_iou')\n",
    "test_iou = MeanIOU(3, name='test_iou')\n",
    "    \n",
    "def train_step(images, labels):\n",
    "    with tf.GradientTape() as tape:\n",
    "        #调用模型得到预测结果\n",
    "        predictions = model(images)   \n",
    "        #对比预测结果与标注得到损失\n",
    "        loss = loss_fn(labels,predictions) \n",
    "    #用经典反向传播得到梯度\n",
    "    gradients = tape.gradient(loss, model.trainable_variables)  \n",
    "    #应用梯度对参数做优化\n",
    "    opt.apply_gradients(zip(gradients, model.trainable_variables))\n",
    "    \n",
    "    #得到我们能看懂的损失值\n",
    "    train_loss(loss)\n",
    "    #得到我们能看懂的准确率\n",
    "    train_acc(labels,predictions)\n",
    "    #IOU值\n",
    "    train_iou(labels,predictions)\n",
    "    \n",
    "def test_step(images, labels):\n",
    "    predictions = model(images)\n",
    "    loss = loss_fn(labels,predictions)\n",
    "    \n",
    "    test_loss(loss)\n",
    "    test_acc(labels,predictions)\n",
    "    #IOU值\n",
    "    test_iou(labels,predictions)\n",
    "    \n",
    "while epoch < EPOCHS:\n",
    "    train_index = 1\n",
    "    test_index = 1\n",
    "    #在下一个epoch开始时，重置评估指标\n",
    "    train_loss.reset_states()\n",
    "    train_acc.reset_states()\n",
    "    train_iou.reset_states()\n",
    "    test_loss.reset_states()\n",
    "    test_acc.reset_states()\n",
    "    test_iou.reset_states()\n",
    "    \n",
    "    print(\"training \", epoch+1, \" epoch: waiting......\")\n",
    "    for images,labels in train_ds:\n",
    "        if(train_index % 50 == 0):\n",
    "            print(\"batch \", train_index, \"/\", step_per_epoch)\n",
    "        train_index = train_index + 1\n",
    "        train_step(images,labels)\n",
    "        \n",
    "    print(\"testing......\")\n",
    "    for images,labels in test_ds:\n",
    "        if(test_index % 50 == 0):\n",
    "            print(\"batch \", test_index, \"/\", val_step)\n",
    "        test_index = test_index + 1\n",
    "        test_step(images,labels)\n",
    "    \n",
    "    print(\"the \", epoch+1, \" result: \")\n",
    "    template = 'Epoch {:.0f}, Loss: {:.2f}, Accuracy: {:.2f}, \\\n",
    "                IOU: {:.3f}, Test Loss: {:.2f}, \\\n",
    "                Test Accuracy: {:.2f}, Test IOU: {:.3f}'\n",
    "    print(template.format(epoch+1,\n",
    "                         train_loss.result(),\n",
    "                         train_acc.result()*100,\n",
    "                         train_iou.result(),\n",
    "                         test_loss.result(),\n",
    "                         test_acc.result()*100,\n",
    "                         test_iou.result()\n",
    "                         ))"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": null,
   "id": "9c3d4fac",
   "metadata": {},
   "outputs": [],
   "source": []
  }
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